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Hi, my network requires 2 inputs A and B, how can I augment them in the same way? like data = {'image1': A, 'image2':B, mask: C}. Thank you
The text was updated successfully, but these errors were encountered:
If you have 2 inputs you can concatenate them over channels axis. Apply augmentation and after split it back.
TMP = np.concatenate([A, B], axis=-1) ... A = TMP[..., :3] B = TMP[..., 3:]
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Hi, my network requires 2 inputs A and B, how can I augment them in the same way? like data = {'image1': A, 'image2':B, mask: C}.
Thank you
The text was updated successfully, but these errors were encountered: