How to find two layers to replace in googlenet?

Hello,
I'm trying the deep learning using googlenet and I don't know how to solve the 'findLayersToReplace'.
I tried this code but it give 3 layers instead of 2 layers that need to find.
layers = net.Layers(end-2:end);
layers =
3x1 Layer array with layers:
1 'loss3-classifier' Fully Connected 1000 fully connected layer
2 'prob' Softmax softmax
3 'output' Classification Output crossentropyex with 'tench' and 999 other classes
I don't need to replace Softmax layer.
Please help me creating the function of findLayersToReplace.
Thank you very much
Hana Razak

2 Comments

Hello, I have the same problem. Have you solved your problem?
hello dear also me the replaceLayer is not work what i do pleas can you help me

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Answers (6)

findLayersToReplace is a supporting function/helper function to the example. To access supporting functions of any MATLAB example, open the example by clicking the blue 'Try it in MATLAB' (or similar) button in the top-right of the examples page.

2 Comments

Hi Johannes,
Why the softmax layer is not replaced in this example? In other descriptions and examples this layer is always replaced... What is better to do? Thanks
Hi the softmax layer is just an activation layer. hence it is not needed to be replaced until you plan to use some other activation. The Fully connected and the classification layer needs your total number of classes, hence we need to replace fc layer and final classification layer(this is set to default as it checks for incoming nodes). Hope it helps

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Thank you very much !!! Ihave solved this problems by this function

2 Comments

marwa za
marwa za on 26 Jan 2020
Edited: marwa za on 26 Jan 2020
hi, please how did you solve your problem ?
@houwang i'm facing the same problem...how did u solve it??

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TASK
Replace the last fully connected layer of the network with the new layer you just created. The layer that you need to replace is named "loss3-classifier".
Replace the last fully connected layer of the network with the new layer you just created. The layer that you need to replace is named "loss3-classifier".
TASK
Replace the last fully connected layer of the network with the new layer you just created. The layer that you need to replace is named "loss3-classifier".
Replace the last fully connected layer of the network with the new layer you just created. The layer that you need to replace is called "loss3-classifier".

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Asked:

on 27 Sep 2018

Answered:

on 15 Jul 2024

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