ID | 116521 |
著者 |
Feng, Duo
Tokushima University
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キーワード | model pruning
local binary convolution
squeeze-and-excitation optimization
image classification
depthwise convolution
mobile inverse bottleneck
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資料タイプ |
学術雑誌論文
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抄録 | This paper proposed a model pruning method based on local binary convolution (LBC) and squeeze-and-excitation (SE) optimization weights. We first proposed an efficient deep separation convolution model based on the LBC kernel. By expanding the number of LBC kernels in the model, we have trained a larger model with better results, but more parameters and slower calculation speed. Then, we extract the SE optimization weight value of each SE module according to the data samples and score the LBC kernel accordingly. Based on the score of each LBC kernel corresponding to the convolution channel, we performed channel-based model pruning, which greatly reduced the number of model parameters and accelerated the calculation speed. The model pruning method proposed in this paper is verified in the image classification database. Experiments show that, in the model using the LBC kernel, as the number of LBC kernels increases, the recognition accuracy will increase. At the same time, the experiment also proved that the recognition accuracy is maintained at a similar level in the small parameter model after channel-based model pruning by the SE optimization weight value.
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掲載誌名 |
Electronics
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ISSN | 20799292
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出版者 | MDPI
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巻 | 10
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号 | 11
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開始ページ | 1329
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発行日 | 2021-06-01
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権利情報 | This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
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言語 |
eng
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出版社版
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部局 |
理工学系
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