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030bf55192
Author | SHA1 | Date | |
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030bf55192 | |||
ee74b825a6 | |||
43f22ad91b |
@ -5,4 +5,4 @@ from PytorchBoot.runners.trainer import DefaultTrainer
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class TrainApp:
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@staticmethod
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def start():
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DefaultTrainer("configs/server/train_config.yaml").run()
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DefaultTrainer("configs/server/server_train_config.yaml").run()
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@ -9,8 +9,8 @@ runner:
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name: debug
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root_dir: "experiments"
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split:
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root_dir: "../data/sample_for_training_preprocessed/sample_preprocessed_scenes"
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split: #
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root_dir: "/home/data/hofee/project/nbv_rec/data/nbv_rec_data_512_preproc_npy"
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type: "unseen_instance" # "unseen_category"
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datasets:
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OmniObject3d_train:
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145
configs/server/server_train_config.yaml
Normal file
145
configs/server/server_train_config.yaml
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@ -0,0 +1,145 @@
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runner:
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general:
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seed: 0
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device: cuda
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cuda_visible_devices: "0"
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parallel: False
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experiment:
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name: overfit_w_global_feat_wo_local_pts_feat_small
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root_dir: "experiments"
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use_checkpoint: False
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epoch: -1 # -1 stands for last epoch
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max_epochs: 5000
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save_checkpoint_interval: 1
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test_first: True
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train:
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optimizer:
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type: Adam
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lr: 0.0001
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losses:
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- gf_loss
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dataset: OmniObject3d_train
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test:
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frequency: 3 # test frequency
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dataset_list:
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#- OmniObject3d_test
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- OmniObject3d_val
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pipeline: nbv_reconstruction_global_pts_pipeline
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dataset:
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OmniObject3d_train:
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root_dir: "/home/data/hofee/project/nbv_rec/data/nbv_rec_data_512_preproc_npy"
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model_dir: "../data/scaled_object_meshes"
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source: nbv_reconstruction_dataset
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split_file: "/home/data/hofee/project/nbv_rec/data/OmniObject3d_sample.txt"
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type: train
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cache: True
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ratio: 1
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batch_size: 160
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num_workers: 16
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pts_num: 4096
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load_from_preprocess: True
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OmniObject3d_test:
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root_dir: "/home/data/hofee/project/nbv_rec/data/nbv_rec_data_512_preproc_npy"
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model_dir: "../data/scaled_object_meshes"
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source: nbv_reconstruction_dataset
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split_file: "/home/data/hofee/project/nbv_rec/data/OmniObject3d_test.txt"
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type: test
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cache: True
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filter_degree: 75
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eval_list:
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- pose_diff
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ratio: 0.05
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batch_size: 1
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num_workers: 12
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pts_num: 4096
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load_from_preprocess: True
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OmniObject3d_val:
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root_dir: "/home/data/hofee/project/nbv_rec/data/nbv_rec_data_512_preproc_npy"
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model_dir: "../data/scaled_object_meshes"
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source: nbv_reconstruction_dataset
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split_file: "/home/data/hofee/project/nbv_rec/data/OmniObject3d_sample.txt"
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type: test
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cache: True
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filter_degree: 75
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eval_list:
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- pose_diff
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ratio: 1
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batch_size: 1
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num_workers: 12
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pts_num: 4096
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load_from_preprocess: True
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pipeline:
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nbv_reconstruction_local_pts_pipeline:
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modules:
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pts_encoder: pointnet_encoder
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seq_encoder: transformer_seq_encoder
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pose_encoder: pose_encoder
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view_finder: gf_view_finder
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eps: 1e-5
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global_scanned_feat: True
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nbv_reconstruction_global_pts_pipeline:
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modules:
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pts_encoder: pointnet_encoder
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pose_seq_encoder: transformer_pose_seq_encoder
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pose_encoder: pose_encoder
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view_finder: gf_view_finder
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eps: 1e-5
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global_scanned_feat: True
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module:
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pointnet_encoder:
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in_dim: 3
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out_dim: 1024
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global_feat: True
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feature_transform: False
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transformer_seq_encoder:
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pts_embed_dim: 1024
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pose_embed_dim: 256
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num_heads: 4
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ffn_dim: 256
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num_layers: 3
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output_dim: 2048
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transformer_pose_seq_encoder:
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pose_embed_dim: 256
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num_heads: 4
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ffn_dim: 256
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num_layers: 3
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output_dim: 1024
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gf_view_finder:
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t_feat_dim: 128
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pose_feat_dim: 256
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main_feat_dim: 2048
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regression_head: Rx_Ry_and_T
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pose_mode: rot_matrix
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per_point_feature: False
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sample_mode: ode
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sampling_steps: 500
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sde_mode: ve
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pose_encoder:
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pose_dim: 9
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out_dim: 256
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loss_function:
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gf_loss:
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evaluation_method:
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pose_diff:
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coverage_rate_increase:
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renderer_path: "../blender/data_renderer.py"
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@ -1,106 +0,0 @@
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runner:
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general:
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seed: 0
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device: cuda
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cuda_visible_devices: "0,1,2,3,4,5,6,7"
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parallel: False
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experiment:
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name: new_test_overfit_to_world_preprocessed
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root_dir: "experiments"
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use_checkpoint: False
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epoch: -1 # -1 stands for last epoch
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max_epochs: 5000
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save_checkpoint_interval: 3
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test_first: True
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train:
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optimizer:
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type: Adam
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lr: 0.0001
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losses:
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- gf_loss
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dataset: OmniObject3d_train
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test:
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frequency: 3 # test frequency
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dataset_list:
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- OmniObject3d_test
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pipeline: nbv_reconstruction_pipeline
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dataset:
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OmniObject3d_train:
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root_dir: "../data/sample_for_training_preprocessed/sample_preprocessed_scenes"
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model_dir: "../data/scaled_object_meshes"
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source: nbv_reconstruction_dataset
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split_file: "../data/sample_for_training_preprocessed/OmniObject3d_train.txt"
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type: train
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cache: True
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ratio: 1
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batch_size: 160
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num_workers: 16
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pts_num: 4096
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load_from_preprocess: True
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OmniObject3d_test:
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root_dir: "../data/sample_for_training_preprocessed/sample_preprocessed_scenes"
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model_dir: "../data/scaled_object_meshes"
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source: nbv_reconstruction_dataset
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split_file: "../data/sample_for_training_preprocessed/OmniObject3d_train.txt"
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type: test
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cache: True
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filter_degree: 75
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eval_list:
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- pose_diff
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ratio: 0.1
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batch_size: 1
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num_workers: 12
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pts_num: 4096
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load_from_preprocess: True
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pipeline:
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nbv_reconstruction_pipeline:
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pts_encoder: pointnet_encoder
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seq_encoder: transformer_seq_encoder
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pose_encoder: pose_encoder
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view_finder: gf_view_finder
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module:
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pointnet_encoder:
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in_dim: 3
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out_dim: 1024
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global_feat: True
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feature_transform: False
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transformer_seq_encoder:
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pts_embed_dim: 1024
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pose_embed_dim: 256
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num_heads: 4
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ffn_dim: 256
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num_layers: 3
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output_dim: 2048
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gf_view_finder:
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t_feat_dim: 128
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pose_feat_dim: 256
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main_feat_dim: 2048
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regression_head: Rx_Ry_and_T
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pose_mode: rot_matrix
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per_point_feature: False
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sample_mode: ode
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sampling_steps: 500
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sde_mode: ve
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pose_encoder:
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pose_dim: 9
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out_dim: 256
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loss_function:
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gf_loss:
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evaluation_method:
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pose_diff:
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coverage_rate_increase:
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renderer_path: "../blender/data_renderer.py"
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95
core/global_pts_pipeline.py
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95
core/global_pts_pipeline.py
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@ -0,0 +1,95 @@
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import torch
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from torch import nn
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import PytorchBoot.namespace as namespace
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import PytorchBoot.stereotype as stereotype
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from PytorchBoot.factory.component_factory import ComponentFactory
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from PytorchBoot.utils import Log
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@stereotype.pipeline("nbv_reconstruction_global_pts_pipeline")
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class NBVReconstructionGlobalPointsPipeline(nn.Module):
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def __init__(self, config):
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super(NBVReconstructionGlobalPointsPipeline, self).__init__()
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self.config = config
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self.module_config = config["modules"]
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self.pts_encoder = ComponentFactory.create(namespace.Stereotype.MODULE, self.module_config["pts_encoder"])
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self.pose_encoder = ComponentFactory.create(namespace.Stereotype.MODULE, self.module_config["pose_encoder"])
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self.pose_seq_encoder = ComponentFactory.create(namespace.Stereotype.MODULE, self.module_config["pose_seq_encoder"])
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self.view_finder = ComponentFactory.create(namespace.Stereotype.MODULE, self.module_config["view_finder"])
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self.eps = float(self.config["eps"])
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self.enable_global_scanned_feat = self.config["global_scanned_feat"]
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def forward(self, data):
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mode = data["mode"]
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if mode == namespace.Mode.TRAIN:
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return self.forward_train(data)
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elif mode == namespace.Mode.TEST:
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return self.forward_test(data)
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else:
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Log.error("Unknown mode: {}".format(mode), True)
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def pertube_data(self, gt_delta_9d):
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bs = gt_delta_9d.shape[0]
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random_t = torch.rand(bs, device=gt_delta_9d.device) * (1. - self.eps) + self.eps
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random_t = random_t.unsqueeze(-1)
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mu, std = self.view_finder.marginal_prob(gt_delta_9d, random_t)
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std = std.view(-1, 1)
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z = torch.randn_like(gt_delta_9d)
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perturbed_x = mu + z * std
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target_score = - z * std / (std ** 2)
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return perturbed_x, random_t, target_score, std
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def forward_train(self, data):
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main_feat = self.get_main_feat(data)
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''' get std '''
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best_to_world_pose_9d_batch = data["best_to_world_pose_9d"]
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perturbed_x, random_t, target_score, std = self.pertube_data(best_to_world_pose_9d_batch)
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input_data = {
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"sampled_pose": perturbed_x,
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"t": random_t,
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"main_feat": main_feat,
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}
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estimated_score = self.view_finder(input_data)
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output = {
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"estimated_score": estimated_score,
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"target_score": target_score,
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"std": std
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}
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return output
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def forward_test(self,data):
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main_feat = self.get_main_feat(data)
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estimated_delta_rot_9d, in_process_sample = self.view_finder.next_best_view(main_feat)
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result = {
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"pred_pose_9d": estimated_delta_rot_9d,
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"in_process_sample": in_process_sample
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}
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return result
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def get_main_feat(self, data):
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scanned_n_to_world_pose_9d_batch = data['scanned_n_to_world_pose_9d']
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device = next(self.parameters()).device
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pts_feat_seq_list = []
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pose_feat_seq_list = []
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for scanned_n_to_world_pose_9d in scanned_n_to_world_pose_9d_batch:
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scanned_n_to_world_pose_9d = scanned_n_to_world_pose_9d.to(device)
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pose_feat_seq_list.append(self.pose_encoder.encode_pose(scanned_n_to_world_pose_9d))
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main_feat = self.pose_seq_encoder.encode_sequence(pose_feat_seq_list)
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if self.enable_global_scanned_feat:
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combined_scanned_pts_batch = data['combined_scanned_pts']
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global_scanned_feat = self.pts_encoder.encode_points(combined_scanned_pts_batch)
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main_feat = torch.cat([main_feat, global_scanned_feat], dim=-1)
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if torch.isnan(main_feat).any():
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Log.error("nan in main_feat", True)
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return main_feat
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@ -5,16 +5,18 @@ import PytorchBoot.stereotype as stereotype
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from PytorchBoot.factory.component_factory import ComponentFactory
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from PytorchBoot.utils import Log
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@stereotype.pipeline("nbv_reconstruction_pipeline")
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class NBVReconstructionPipeline(nn.Module):
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@stereotype.pipeline("nbv_reconstruction_local_pts_pipeline")
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class NBVReconstructionLocalPointsPipeline(nn.Module):
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def __init__(self, config):
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super(NBVReconstructionPipeline, self).__init__()
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super(NBVReconstructionLocalPointsPipeline, self).__init__()
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self.config = config
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self.pts_encoder = ComponentFactory.create(namespace.Stereotype.MODULE, config["pts_encoder"])
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self.pose_encoder = ComponentFactory.create(namespace.Stereotype.MODULE, config["pose_encoder"])
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self.seq_encoder = ComponentFactory.create(namespace.Stereotype.MODULE, config["seq_encoder"])
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self.view_finder = ComponentFactory.create(namespace.Stereotype.MODULE, config["view_finder"])
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self.eps = 1e-5
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self.module_config = config["modules"]
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self.pts_encoder = ComponentFactory.create(namespace.Stereotype.MODULE, self.module_config["pts_encoder"])
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self.pose_encoder = ComponentFactory.create(namespace.Stereotype.MODULE, self.module_config["pose_encoder"])
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self.seq_encoder = ComponentFactory.create(namespace.Stereotype.MODULE, self.module_config["seq_encoder"])
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self.view_finder = ComponentFactory.create(namespace.Stereotype.MODULE, self.module_config["view_finder"])
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self.eps = float(self.config["eps"])
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self.enable_global_scanned_feat = self.config["global_scanned_feat"]
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def forward(self, data):
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mode = data["mode"]
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@ -38,14 +40,14 @@ class NBVReconstructionPipeline(nn.Module):
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return perturbed_x, random_t, target_score, std
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def forward_train(self, data):
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seq_feat = self.get_seq_feat(data)
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main_feat = self.get_main_feat(data)
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''' get std '''
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best_to_world_pose_9d_batch = data["best_to_world_pose_9d"]
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perturbed_x, random_t, target_score, std = self.pertube_data(best_to_world_pose_9d_batch)
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input_data = {
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"sampled_pose": perturbed_x,
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"t": random_t,
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"seq_feat": seq_feat,
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"main_feat": main_feat,
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}
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estimated_score = self.view_finder(input_data)
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output = {
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@ -56,20 +58,27 @@ class NBVReconstructionPipeline(nn.Module):
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return output
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def forward_test(self,data):
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seq_feat = self.get_seq_feat(data)
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estimated_delta_rot_9d, in_process_sample = self.view_finder.next_best_view(seq_feat)
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main_feat = self.get_main_feat(data)
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estimated_delta_rot_9d, in_process_sample = self.view_finder.next_best_view(main_feat)
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result = {
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"pred_pose_9d": estimated_delta_rot_9d,
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"in_process_sample": in_process_sample
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}
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return result
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def get_seq_feat(self, data):
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def get_main_feat(self, data):
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scanned_pts_batch = data['scanned_pts']
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scanned_n_to_world_pose_9d_batch = data['scanned_n_to_world_pose_9d']
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device = next(self.parameters()).device
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pts_feat_seq_list = []
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pose_feat_seq_list = []
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device = next(self.parameters()).device
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for scanned_pts,scanned_n_to_world_pose_9d in zip(scanned_pts_batch,scanned_n_to_world_pose_9d_batch):
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scanned_pts = scanned_pts.to(device)
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@ -77,8 +86,16 @@ class NBVReconstructionPipeline(nn.Module):
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pts_feat_seq_list.append(self.pts_encoder.encode_points(scanned_pts))
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pose_feat_seq_list.append(self.pose_encoder.encode_pose(scanned_n_to_world_pose_9d))
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seq_feat = self.seq_encoder.encode_sequence(pts_feat_seq_list, pose_feat_seq_list)
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if torch.isnan(seq_feat).any():
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Log.error("nan in seq_feat", True)
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return seq_feat
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main_feat = self.seq_encoder.encode_sequence(pts_feat_seq_list, pose_feat_seq_list)
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if self.enable_global_scanned_feat:
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combined_scanned_pts_batch = data['combined_scanned_pts']
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global_scanned_feat = self.pts_encoder.encode_points(combined_scanned_pts_batch)
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||||
main_feat = torch.cat([main_feat, global_scanned_feat], dim=-1)
|
||||
|
||||
|
||||
if torch.isnan(main_feat).any():
|
||||
Log.error("nan in main_feat", True)
|
||||
|
||||
return main_feat
|
||||
|
@ -7,12 +7,11 @@ from PytorchBoot.utils.log_util import Log
|
||||
import torch
|
||||
import os
|
||||
import sys
|
||||
sys.path.append(r"/media/hofee/data/project/python/nbv_reconstruction/nbv_reconstruction")
|
||||
sys.path.append(r"/home/data/hofee/project/nbv_rec/nbv_reconstruction")
|
||||
|
||||
from utils.data_load import DataLoadUtil
|
||||
from utils.pose import PoseUtil
|
||||
from utils.pts import PtsUtil
|
||||
from utils.reconstruction import ReconstructionUtil
|
||||
|
||||
|
||||
@stereotype.dataset("nbv_reconstruction_dataset")
|
||||
@ -35,7 +34,7 @@ class NBVReconstructionDataset(BaseDataset):
|
||||
self.model_dir = config["model_dir"]
|
||||
self.filter_degree = config["filter_degree"]
|
||||
if self.type == namespace.Mode.TRAIN:
|
||||
scale_ratio = 1
|
||||
scale_ratio = 100
|
||||
self.datalist = self.datalist*scale_ratio
|
||||
if self.cache:
|
||||
expr_root = ConfigManager.get("runner", "experiment", "root_dir")
|
||||
@ -56,20 +55,35 @@ class NBVReconstructionDataset(BaseDataset):
|
||||
def get_datalist(self):
|
||||
datalist = []
|
||||
for scene_name in self.scene_name_list:
|
||||
label_path = DataLoadUtil.get_label_path_old(self.root_dir, scene_name)
|
||||
label_data = DataLoadUtil.load_label(label_path)
|
||||
for data_pair in label_data["data_pairs"]:
|
||||
scanned_views = data_pair[0]
|
||||
next_best_view = data_pair[1]
|
||||
seq_num = DataLoadUtil.get_label_num(self.root_dir, scene_name)
|
||||
scene_max_coverage_rate = 0
|
||||
max_coverage_rate_list = []
|
||||
|
||||
for seq_idx in range(seq_num):
|
||||
label_path = DataLoadUtil.get_label_path(self.root_dir, scene_name, seq_idx)
|
||||
label_data = DataLoadUtil.load_label(label_path)
|
||||
max_coverage_rate = label_data["max_coverage_rate"]
|
||||
datalist.append(
|
||||
{
|
||||
"scanned_views": scanned_views,
|
||||
"next_best_view": next_best_view,
|
||||
"max_coverage_rate": max_coverage_rate,
|
||||
"scene_name": scene_name,
|
||||
}
|
||||
)
|
||||
if max_coverage_rate > scene_max_coverage_rate:
|
||||
scene_max_coverage_rate = max_coverage_rate
|
||||
max_coverage_rate_list.append(max_coverage_rate)
|
||||
mean_coverage_rate = np.mean(max_coverage_rate_list)
|
||||
|
||||
for seq_idx in range(seq_num):
|
||||
label_path = DataLoadUtil.get_label_path(self.root_dir, scene_name, seq_idx)
|
||||
label_data = DataLoadUtil.load_label(label_path)
|
||||
if max_coverage_rate_list[seq_idx] > mean_coverage_rate - 0.1:
|
||||
for data_pair in label_data["data_pairs"]:
|
||||
scanned_views = data_pair[0]
|
||||
next_best_view = data_pair[1]
|
||||
datalist.append({
|
||||
"scanned_views": scanned_views,
|
||||
"next_best_view": next_best_view,
|
||||
"seq_max_coverage_rate": max_coverage_rate,
|
||||
"scene_name": scene_name,
|
||||
"label_idx": seq_idx,
|
||||
"scene_max_coverage_rate": scene_max_coverage_rate
|
||||
})
|
||||
break # TODO: for small version debug
|
||||
return datalist
|
||||
|
||||
def preprocess_cache(self):
|
||||
@ -102,7 +116,7 @@ class NBVReconstructionDataset(BaseDataset):
|
||||
data_item_info = self.datalist[index]
|
||||
scanned_views = data_item_info["scanned_views"]
|
||||
nbv = data_item_info["next_best_view"]
|
||||
max_coverage_rate = data_item_info["max_coverage_rate"]
|
||||
max_coverage_rate = data_item_info["seq_max_coverage_rate"]
|
||||
scene_name = data_item_info["scene_name"]
|
||||
scanned_views_pts, scanned_coverages_rate, scanned_n_to_world_pose = [], [], []
|
||||
|
||||
@ -151,13 +165,18 @@ class NBVReconstructionDataset(BaseDataset):
|
||||
best_to_world_6d = PoseUtil.matrix_to_rotation_6d_numpy(np.asarray(best_frame_to_world[:3,:3]))
|
||||
best_to_world_trans = best_frame_to_world[:3,3]
|
||||
best_to_world_9d = np.concatenate([best_to_world_6d, best_to_world_trans], axis=0)
|
||||
|
||||
combined_scanned_views_pts = np.concatenate(scanned_views_pts, axis=0)
|
||||
voxel_downsampled_combined_scanned_pts_np = PtsUtil.voxel_downsample_point_cloud(combined_scanned_views_pts, 0.002)
|
||||
random_downsampled_combined_scanned_pts_np = PtsUtil.random_downsample_point_cloud(voxel_downsampled_combined_scanned_pts_np, self.pts_num)
|
||||
data_item = {
|
||||
"scanned_pts": np.asarray(scanned_views_pts,dtype=np.float32),
|
||||
"combined_scanned_pts": np.asarray(random_downsampled_combined_scanned_pts_np,dtype=np.float32),
|
||||
"scanned_coverage_rate": scanned_coverages_rate,
|
||||
"scanned_n_to_world_pose_9d": np.asarray(scanned_n_to_world_pose,dtype=np.float32),
|
||||
"best_coverage_rate": nbv_coverage_rate,
|
||||
"best_to_world_pose_9d": np.asarray(best_to_world_9d,dtype=np.float32),
|
||||
"max_coverage_rate": max_coverage_rate,
|
||||
"seq_max_coverage_rate": max_coverage_rate,
|
||||
"scene_name": scene_name
|
||||
}
|
||||
|
||||
@ -195,10 +214,11 @@ class NBVReconstructionDataset(BaseDataset):
|
||||
collate_data["scanned_pts"] = [torch.tensor(item['scanned_pts']) for item in batch]
|
||||
collate_data["scanned_n_to_world_pose_9d"] = [torch.tensor(item['scanned_n_to_world_pose_9d']) for item in batch]
|
||||
collate_data["best_to_world_pose_9d"] = torch.stack([torch.tensor(item['best_to_world_pose_9d']) for item in batch])
|
||||
collate_data["combined_scanned_pts"] = torch.stack([torch.tensor(item['combined_scanned_pts']) for item in batch])
|
||||
if "first_frame_to_world" in batch[0]:
|
||||
collate_data["first_frame_to_world"] = torch.stack([torch.tensor(item["first_frame_to_world"]) for item in batch])
|
||||
for key in batch[0].keys():
|
||||
if key not in ["scanned_pts", "scanned_n_to_world_pose_9d", "best_to_world_pose_9d", "first_frame_to_world"]:
|
||||
if key not in ["scanned_pts", "scanned_n_to_world_pose_9d", "best_to_world_pose_9d", "first_frame_to_world", "combined_scanned_pts"]:
|
||||
collate_data[key] = [item[key] for item in batch]
|
||||
return collate_data
|
||||
return collate_fn
|
||||
@ -211,11 +231,11 @@ if __name__ == "__main__":
|
||||
torch.manual_seed(seed)
|
||||
np.random.seed(seed)
|
||||
config = {
|
||||
"root_dir": "/media/hofee/repository/nbv_reconstruction_data_512",
|
||||
"model_dir": "/media/hofee/data/data/scaled_object_meshes",
|
||||
"root_dir": "/home/data/hofee/project/nbv_rec/data/nbv_rec_data_512_preproc_npy",
|
||||
"model_dir": "/home/data/hofee/project/nbv_rec/data/scaled_object_meshes",
|
||||
"source": "nbv_reconstruction_dataset",
|
||||
"split_file": "/media/hofee/data/project/python/nbv_reconstruction/sample_for_training/OmniObject3d_train.txt",
|
||||
"load_from_preprocess": False,
|
||||
"split_file": "/home/data/hofee/project/nbv_rec/data/OmniObject3d_test.txt",
|
||||
"load_from_preprocess": True,
|
||||
"ratio": 0.5,
|
||||
"batch_size": 2,
|
||||
"filter_degree": 75,
|
||||
|
@ -32,7 +32,7 @@ def cond_ode_sampler(
|
||||
init_x=None,
|
||||
):
|
||||
pose_dim = PoseUtil.get_pose_dim(pose_mode)
|
||||
batch_size = data["seq_feat"].shape[0]
|
||||
batch_size = data["main_feat"].shape[0]
|
||||
init_x = (
|
||||
prior((batch_size, pose_dim), T=T).to(device)
|
||||
if init_x is None
|
||||
|
@ -80,13 +80,13 @@ class GradientFieldViewFinder(nn.Module):
|
||||
"""
|
||||
Args:
|
||||
data, dict {
|
||||
'seq_feat': [bs, c]
|
||||
'main_feat': [bs, c]
|
||||
'pose_sample': [bs, pose_dim]
|
||||
't': [bs, 1]
|
||||
}
|
||||
"""
|
||||
|
||||
seq_feat = data['seq_feat']
|
||||
main_feat = data['main_feat']
|
||||
sampled_pose = data['sampled_pose']
|
||||
t = data['t']
|
||||
t_feat = self.t_encoder(t.squeeze(1))
|
||||
@ -95,7 +95,7 @@ class GradientFieldViewFinder(nn.Module):
|
||||
if self.per_point_feature:
|
||||
raise NotImplementedError
|
||||
else:
|
||||
total_feat = torch.cat([seq_feat, t_feat, pose_feat], dim=-1)
|
||||
total_feat = torch.cat([main_feat, t_feat, pose_feat], dim=-1)
|
||||
_, std = self.marginal_prob_fn(total_feat, t)
|
||||
|
||||
if self.regression_head == 'Rx_Ry_and_T':
|
||||
@ -134,9 +134,9 @@ class GradientFieldViewFinder(nn.Module):
|
||||
|
||||
return in_process_sample, res
|
||||
|
||||
def next_best_view(self, seq_feat):
|
||||
def next_best_view(self, main_feat):
|
||||
data = {
|
||||
'seq_feat': seq_feat,
|
||||
'main_feat': main_feat,
|
||||
}
|
||||
in_process_sample, res = self.sample(data)
|
||||
return res.to(dtype=torch.float32), in_process_sample
|
||||
|
63
modules/transformer_pose_seq_encoder.py
Normal file
63
modules/transformer_pose_seq_encoder.py
Normal file
@ -0,0 +1,63 @@
|
||||
import torch
|
||||
from torch import nn
|
||||
from torch.nn.utils.rnn import pad_sequence
|
||||
import PytorchBoot.stereotype as stereotype
|
||||
|
||||
|
||||
@stereotype.module("transformer_pose_seq_encoder")
|
||||
class TransformerPoseSequenceEncoder(nn.Module):
|
||||
def __init__(self, config):
|
||||
super(TransformerPoseSequenceEncoder, self).__init__()
|
||||
self.config = config
|
||||
embed_dim = config["pose_embed_dim"]
|
||||
encoder_layer = nn.TransformerEncoderLayer(
|
||||
d_model=embed_dim,
|
||||
nhead=config["num_heads"],
|
||||
dim_feedforward=config["ffn_dim"],
|
||||
batch_first=True,
|
||||
)
|
||||
self.transformer_encoder = nn.TransformerEncoder(
|
||||
encoder_layer, num_layers=config["num_layers"]
|
||||
)
|
||||
self.fc = nn.Linear(embed_dim, config["output_dim"])
|
||||
|
||||
def encode_sequence(self, pose_embedding_list_batch):
|
||||
|
||||
lengths = []
|
||||
|
||||
for pose_embedding_list in pose_embedding_list_batch:
|
||||
lengths.append(len(pose_embedding_list))
|
||||
|
||||
combined_tensor = pad_sequence(pose_embedding_list_batch, batch_first=True) # Shape: [batch_size, max_seq_len, embed_dim]
|
||||
|
||||
max_len = max(lengths)
|
||||
padding_mask = torch.tensor([([0] * length + [1] * (max_len - length)) for length in lengths], dtype=torch.bool).to(combined_tensor.device)
|
||||
|
||||
transformer_output = self.transformer_encoder(combined_tensor, src_key_padding_mask=padding_mask)
|
||||
final_feature = transformer_output.mean(dim=1)
|
||||
final_output = self.fc(final_feature)
|
||||
|
||||
return final_output
|
||||
|
||||
|
||||
if __name__ == "__main__":
|
||||
config = {
|
||||
"pose_embed_dim": 256,
|
||||
"num_heads": 4,
|
||||
"ffn_dim": 256,
|
||||
"num_layers": 3,
|
||||
"output_dim": 1024,
|
||||
}
|
||||
|
||||
encoder = TransformerPoseSequenceEncoder(config)
|
||||
seq_len = [5, 8, 9, 4]
|
||||
batch_size = 4
|
||||
|
||||
pose_embedding_list_batch = [
|
||||
torch.randn(seq_len[idx], config["pose_embed_dim"]) for idx in range(batch_size)
|
||||
]
|
||||
output_feature = encoder.encode_sequence(
|
||||
pose_embedding_list_batch
|
||||
)
|
||||
print("Encoded Feature:", output_feature)
|
||||
print("Feature Shape:", output_feature.shape)
|
Loading…
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Reference in New Issue
Block a user