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fix path (#72)
1 parent 32e382b commit 2dd88e5

2 files changed

Lines changed: 3 additions & 10 deletions

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encoding/models/encnet.py

Lines changed: 3 additions & 3 deletions
Original file line numberDiff line numberDiff line change
@@ -166,7 +166,7 @@ def get_encnet_resnet50_pcontext(pretrained=False, root='~/.encoding/models', **
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>>> model = get_encnet_resnet50_pcontext(pretrained=True)
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>>> print(model)
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"""
169-
return get_encnet('pcontext', 'resnet50', pretrained, aux=False, **kwargs)
169+
return get_encnet('pcontext', 'resnet50', pretrained, root=root, aux=False, **kwargs)
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171171
def get_encnet_resnet101_pcontext(pretrained=False, root='~/.encoding/models', **kwargs):
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r"""EncNet-PSP model from the paper `"Context Encoding for Semantic Segmentation"
@@ -185,7 +185,7 @@ def get_encnet_resnet101_pcontext(pretrained=False, root='~/.encoding/models', *
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>>> model = get_encnet_resnet101_pcontext(pretrained=True)
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>>> print(model)
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"""
188-
return get_encnet('pcontext', 'resnet101', pretrained, aux=False, **kwargs)
188+
return get_encnet('pcontext', 'resnet101', pretrained, root=root, aux=False, **kwargs)
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190190
def get_encnet_resnet50_ade(pretrained=False, root='~/.encoding/models', **kwargs):
191191
r"""EncNet-PSP model from the paper `"Context Encoding for Semantic Segmentation"
@@ -204,4 +204,4 @@ def get_encnet_resnet50_ade(pretrained=False, root='~/.encoding/models', **kwarg
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>>> model = get_encnet_resnet50_ade(pretrained=True)
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>>> print(model)
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"""
207-
return get_encnet('ade20k', 'resnet50', pretrained, aux=True, **kwargs)
207+
return get_encnet('ade20k', 'resnet50', pretrained, root=root, aux=True, **kwargs)

encoding/nn/customize.py

Lines changed: 0 additions & 7 deletions
Original file line numberDiff line numberDiff line change
@@ -177,13 +177,6 @@ def __init__(self, in_channels, norm_layer, up_kwargs):
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# bilinear upsample options
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self._up_kwargs = up_kwargs
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180-
def _cat_each(self, x, feat1, feat2, feat3, feat4):
181-
assert(len(x) == len(feat1))
182-
z = []
183-
for i in range(len(x)):
184-
z.append(torch.cat((x[i], feat1[i], feat2[i], feat3[i], feat4[i]), 1))
185-
return z
186-
187180
def forward(self, x):
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_, _, h, w = x.size()
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feat1 = F.upsample(self.conv1(self.pool1(x)), (h, w), **self._up_kwargs)

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