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import torch.nn.functional as F |
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def interp(tensor, size): |
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return F.interpolate( |
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tensor, |
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size=size, |
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mode="bilinear", |
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align_corners=True, |
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) |
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class InputPadder: |
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"""Pads images such that dimensions are divisible by 8""" |
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def __init__(self, dims, mode="sintel", divis_by=8): |
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self.ht, self.wd = dims[-2:] |
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pad_ht = (((self.ht // divis_by) + 1) * divis_by - self.ht) % divis_by |
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pad_wd = (((self.wd // divis_by) + 1) * divis_by - self.wd) % divis_by |
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if mode == "sintel": |
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self._pad = [ |
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pad_wd // 2, |
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pad_wd - pad_wd // 2, |
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pad_ht // 2, |
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pad_ht - pad_ht // 2, |
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] |
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else: |
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self._pad = [pad_wd // 2, pad_wd - pad_wd // 2, 0, pad_ht] |
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def pad(self, *inputs): |
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assert all((x.ndim == 4) for x in inputs) |
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return [F.pad(x, self._pad, mode="replicate") for x in inputs] |
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def unpad(self, x): |
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assert x.ndim == 4 |
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ht, wd = x.shape[-2:] |
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c = [self._pad[2], ht - self._pad[3], self._pad[0], wd - self._pad[1]] |
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return x[..., c[0] : c[1], c[2] : c[3]] |
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