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Top-1 Acc=61.0% on ImageNet, without any sacrificing compared with SqueezeNet v1.1. #47

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miaow1988 opened this issue Jun 30, 2017 · 4 comments

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@miaow1988
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Hi,
I've trained a new model based on SqueezeNet V1.1, and it achieved 61% top-1 accuracy on ImageNet without sacrificing parameter numbers and efficiency.
I've uploaded my model to this [https://github.com/miaow1988/SqueezeNet_v1.2] repository.
Would you please added my repository to your README.md file, so more people could know this work.

Jie

@forresti
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forresti commented Oct 9, 2017

Sorry for the slow reply. I would be interested to learn more about this. I don't have your contact info, so could you send me an email at forrest@deepscale.ai?

@ujsyehao
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Hi, @miaow1988 Can you share your tricks about training squeeze net v1.1 model?
Thank you in advance!

@ujsyehao
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ujsyehao commented May 16, 2018

@forresti Hi,I follow @miaow1988 tutorial and train the model, It performs better when removing relu after squeeze net layer, Do you have some ideas about it?

@syedmustafan
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@miaow1988 The results by removing RELU were really good.

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