Can now be trained with normals
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+9
-8
@@ -24,13 +24,15 @@ class CustomShapeNet(InMemoryDataset):
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modes = {key: val for val, key in enumerate(['train', 'test', 'predict'])}
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def __init__(self, root_dir, collate_per_segment=True, mode='train', transform=None, pre_filter=None,
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pre_transform=None, headers=True, has_variations=False, refresh=False, labels_within=False):
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pre_transform=None, headers=True, has_variations=False, refresh=False, labels_within=False,
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with_normals=False):
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assert mode in self.modes.keys(), f'"mode" must be one of {self.modes.keys()}'
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assert not (collate_per_segment and has_variations), 'Either use each element or pointclouds - with variations'
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#Set the Dataset Parameters
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self.has_headers, self.has_variations, self.labels_within = headers, has_variations, labels_within
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self.collate_per_element, self.mode, self.refresh = collate_per_segment, mode, refresh
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self.with_normals = with_normals
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super(CustomShapeNet, self).__init__(root_dir, transform, pre_transform, pre_filter)
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self.data, self.slices = self._load_dataset()
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print("Initialized")
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@@ -143,8 +145,10 @@ class CustomShapeNet(InMemoryDataset):
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y_all = [-1] * points.shape[0]
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y = torch.as_tensor(y_all, dtype=torch.int)
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####################################
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# This is where you define the keys
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attr_dict = dict(y=y, pos=points[:, :3], normals=points[:, 3:6])
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attr_dict = dict(y=y, pos=points[:, :3 if not self.with_normals else 6])
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####################################
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if self.collate_per_element:
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data = Data(**attr_dict)
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else:
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@@ -197,16 +201,13 @@ class ShapeNetPartSegDataset(Dataset):
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except ValueError:
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choice = []
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pos, normals, labels = data.pos[choice, :], data.normals[choice, :], data.y[choice]
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# pos, labels = data.pos[choice, :], data.y[choice]
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pos, labels = data.pos[choice, :], data.y[choice]
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labels -= 1 if self.num_classes() in labels else 0 # Map label from [1, C] to [0, C-1]
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sample = {
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'points': torch.cat([pos, normals], dim=1), # torch.Tensor (n, 6)
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'labels': labels, # torch.Tensor (n,)
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'pos': pos, # torch.Tensor (n, 3)
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'normals': normals # torch.Tensor (n, 3)
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'points': pos, # torch.Tensor (n, 6)
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'labels': labels # torch.Tensor (n,)
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}
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return sample
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