Anyone have an idea of how I can implement Depthwise convolutions and Separable Convoltuons in pytorch? The definitions of these can be found here.
Can one define those using just regular conv layers somehow?
Anyone have an idea of how I can implement Depthwise convolutions and Separable Convoltuons in pytorch? The definitions of these can be found here.
Can one define those using just regular conv layers somehow?
for Depthwise / Separable, you can use Conv’s groups
parameter.
http://pytorch.org/docs/master/nn.html#conv2d
If groups = nInputPlane, then it is Depthwise. If groups = nInputPlane, kernel=(K, 1), (and before is a Conv2d layer with groups=1 and kernel=(1, K)), then it is separable.
Thanks so much, I will try it out.
Hi, Smith, is the Depthwise / Separable convolutions still very slow on Pytorch as before?
Hi,
In Spatial Separable Convolution:
why is groups=nInputPlane?
Hi, hellodrx, I am facing this issue. Do you solve it ?
According to the definition, I think this implementation is not the separable conv.