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As per the architecture definition provided here, it is shown that the batch normalization is used in inverted-residual blocks as below.
But when we download a pretrained model from tensorflow and visualize it in Netron, it is as per below.
So this make a huge difference in number of parameters and final accuracy.
The text was updated successfully, but these errors were encountered:
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As per the architecture definition provided here, it is shown that the batch normalization is used in inverted-residual blocks as below.
Even in their paper they mentioned that they use batch norm after every layer.
But when we download a pretrained model from tensorflow and visualize it in Netron, it is as per below.
So this make a huge difference in number of parameters and final accuracy.
The text was updated successfully, but these errors were encountered: