空洞卷积输入输出感受野计算

空洞卷积的等效卷积核(感受野)⼤⼩:

ke = k + (k − 1)(r − 1)

k为原始卷积核⼤⼩,r为dia rate参数。

输出计算同卷积运算。

输出特征⼤⼩计算

out = ( in − F + 2 ∗ pading ) / stride +1

注意:这⾥的F就是上⾯的感受野,这个公式也适⽤于常规的卷积

例如在deeplabv3+中特征⾦字塔模块:

#dilations = [1, 6, 12, 18]#
self.aspp1 = _ASPPModule(inplanes, 256,1, padding=0, dilation=dilations[0], BatchNorm=BatchNorm)
self.aspp2 = _ASPPModule(inplanes, 256,3, padding=dilations[1], dilation=dilations[1], BatchNorm=BatchNorm)
self.aspp3 = _ASPPModule(inplanes, 256,3, padding=dilations[2], dilation=dilations[2],BatchNorm=BatchNorm)
self.aspp4 = _ASPPModule(inplanes, 256,3, padding=dilations[3],dilation=dilations[3], BatchNorm=BatchNorm)

以上四步输出尺⼨⼤⼩相同 256*256

参考:
https://www.jianshu.com/p/a74117aea9ad
https://blog.csdn.net/m0_45447650/article/details/125540126

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转载自blog.csdn.net/zml194849/article/details/131168621