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6da552a2
编写于
10月 09, 2020
作者:
Z
zhulei
提交者:
GitHub
10月 09, 2020
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差异文件
Update initializer examples of Bilinear (#27709)
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python/paddle/fluid/initializer.py
python/paddle/fluid/initializer.py
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python/paddle/fluid/initializer.py
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@@ -729,31 +729,32 @@ class BilinearInitializer(Initializer):
.. code-block:: python
import paddle.fluid as fluid
import math
import paddle
import paddle.nn as nn
from paddle.regularizer import L2Decay
factor = 2
C = 2
B = 8
H = W = 32
w_attr = fluid.param_attr.ParamAttr(
learning_rate=0.,
regularizer=fluid.regularizer.L2Decay(0.),
initializer=fluid.initializer.Bilinear())
x = fluid.data(name="data", shape=[B, 3, H, W],
dtype="float32")
conv_up = fluid.layers.conv2d_transpose(
input=x,
num_filters=C,
output_size=None,
filter_size=2 * factor - factor % 2,
padding=int(math.ceil((factor - 1) / 2.)),
w_attr = paddle.ParamAttr(learning_rate=0.,
regularizer=L2Decay(0.),
initializer=nn.initializer.Bilinear())
data = paddle.rand([B, 3, H, W], dtype='float32')
conv_up = nn.ConvTranspose2d(3,
out_channels=C,
kernel_size=2 * factor - factor % 2,
padding=int(
math.ceil((factor - 1) / 2.)),
stride=factor,
groups=C,
param_attr=w_attr,
weight_attr=w_attr,
bias_attr=False)
x = conv_up(data)
Where, `
num_filter
s=C` and `groups=C` means this is channel-wise transposed
convolution. The filter shape will be (C, 1, K, K) where K is `
filer
_size`,
Where, `
out_channel
s=C` and `groups=C` means this is channel-wise transposed
convolution. The filter shape will be (C, 1, K, K) where K is `
kernel
_size`,
This initializer will set a (K, K) interpolation kernel for every channel
of the filter identically. The resulting shape of the output feature map
will be (B, C, factor * H, factor * W). Note that the learning rate and the
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