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ab_local_o
...
8a05b7883d
Author | SHA1 | Date | |
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8a05b7883d | |||
e23697eb87 | |||
2487039445 |
@@ -3,11 +3,11 @@ 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: "1"
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cuda_visible_devices: "0"
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parallel: False
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experiment:
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name: debug
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name: train_ab_global_only
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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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@@ -25,60 +25,60 @@ runner:
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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_test
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- OmniObject3d_val
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pipeline: nbv_reconstruction_global_pts_n_num_pipeline
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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: "/home/data/hofee/project/nbv_rec/data/sample_for_training_new"
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root_dir: "/data/hofee/data/new_full_data"
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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/sample.txt"
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split_file: "/data/hofee/data/new_full_data_list/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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batch_size: 80
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num_workers: 128
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pts_num: 8192
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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/sample_for_training_new"
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root_dir: "/data/hofee/data/new_full_data"
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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/sample.txt"
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split_file: "/data/hofee/data/new_full_data_list/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: 160
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ratio: 0.1
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batch_size: 80
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num_workers: 12
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pts_num: 8192
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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/sample_for_training_new"
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root_dir: "/data/hofee/data/new_full_data"
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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/sample.txt"
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split_file: "/data/hofee/data/new_full_data_list/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: 0.005
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batch_size: 160
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ratio: 0.01
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batch_size: 80
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num_workers: 12
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pts_num: 8192
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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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nbv_reconstruction_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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@@ -87,25 +87,6 @@ pipeline:
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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_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_n_num_pipeline:
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modules:
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pts_encoder: pointnet_encoder
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transformer_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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pts_num_encoder: pts_num_encoder
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eps: 1e-5
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global_scanned_feat: True
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module:
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@@ -34,7 +34,7 @@ class NBVReconstructionDataset(BaseDataset):
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#self.model_dir = config["model_dir"]
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self.filter_degree = config["filter_degree"]
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if self.type == namespace.Mode.TRAIN:
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scale_ratio = 100
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scale_ratio = 50
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self.datalist = self.datalist*scale_ratio
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if self.cache:
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expr_root = ConfigManager.get("runner", "experiment", "root_dir")
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@@ -206,14 +206,9 @@ class NBVReconstructionDataset(BaseDataset):
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collate_data["combined_scanned_pts"] = torch.stack(
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[torch.tensor(item["combined_scanned_pts"]) for item in batch]
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)
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collate_data["scanned_pts_mask"] = torch.stack(
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[torch.tensor(item["scanned_pts_mask"]) for item in batch]
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)
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for key in batch[0].keys():
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if key not in [
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"scanned_pts",
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"scanned_pts_mask",
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"scanned_n_to_world_pose_9d",
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"best_to_world_pose_9d",
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"combined_scanned_pts",
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@@ -20,8 +20,8 @@ class NBVReconstructionPipeline(nn.Module):
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self.pose_encoder = ComponentFactory.create(
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namespace.Stereotype.MODULE, self.module_config["pose_encoder"]
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)
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self.transformer_seq_encoder = ComponentFactory.create(
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namespace.Stereotype.MODULE, self.module_config["transformer_seq_encoder"]
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self.seq_encoder = ComponentFactory.create(
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namespace.Stereotype.MODULE, self.module_config["seq_encoder"]
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)
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self.view_finder = ComponentFactory.create(
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namespace.Stereotype.MODULE, self.module_config["view_finder"]
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@@ -29,7 +29,6 @@ class NBVReconstructionPipeline(nn.Module):
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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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@@ -55,10 +54,7 @@ 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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start_time = time.time()
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main_feat = self.get_main_feat(data)
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end_time = time.time()
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print("get_main_feat time: ", end_time - start_time)
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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(
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@@ -108,7 +104,7 @@ class NBVReconstructionPipeline(nn.Module):
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seq_embedding = pose_feat_seq
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embedding_list_batch.append(seq_embedding) # List(B): Tensor(S x (Dp))
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seq_feat = self.transformer_seq_encoder.encode_sequence(embedding_list_batch) # Tensor(B x Ds)
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seq_feat = self.seq_encoder.encode_sequence(embedding_list_batch) # Tensor(B x Ds)
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main_feat = torch.cat([seq_feat, global_scanned_feat], dim=-1) # Tensor(B x (Ds+Dg))
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if torch.isnan(main_feat).any():
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