I know that this example is supposed to illustrate how to add trainable parameters in a Python layer using the add_blob() method.

However, I am still unable to understand how this can be used to set the dimensions of the blob based on user defined parameters.

There is a better example here on how to write a Python layer here. But here, the layer does not contain any trainable parameters.

Please explain how to write a custom Python layer with trainable parameters.

  • I'm not sure what you mean by "set dimensions of the blob". AFAIK, caffe sets the top blob size based on the bottom blob size and properties of the current layer; so, you don't need to set the dimensions. – AHA Sep 13 '16 at 4:53

When you add a parameters blob using add_blob(), you can reshape the added blob, either in setup() method (right when you add it), or in the layer's reshape() method.

  • Could you comment on how to let the layer have hyper-parameters that are user-defined in the train_val.prototxt file ? Also, are you required to make any changes in the caffe.proto or the header files when writing a custom Python layer? – Suhas Lohit Sep 13 '16 at 18:32

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