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Determining Ratio of Prunable Channels in MobileNet by Sparsity for Acoustic Scene Classification

2022-10-28 07:41:16
Yiqiang Cai, Shengchen Li

Abstract

MobileNet is widely used for Acoustic Scene Classification (ASC) in embedded systems. Existing works reduce the complexity of ASC algorithms by pruning some components, e.g. pruning channels in the convolutional layer. In practice, the maximum proportion of channels being pruned, which is defined as Ratio of Prunable Channels ($R_\textit{PC}$), is often decided empirically. This paper proposes a method that determines the $R_\textit{PC}$ by simple linear regression models related to the Sparsity of Channels ($S_C$) in the convolutional layers. In the experiment, $R_\textit{PC}$ is examined by removing inactive channels until reaching a knee point of performance decrease. Simple methods for calculating the $S_C$ of trained models and resulted $R_\textit{PC}$ are proposed. The experiment results demonstrate that 1) the decision of $R_\textit{PC}$ is linearly dependent on $S_C$ and the hyper-parameters have a little impact on the relationship; 2) MobileNet shows a high sensitivity and stability on proposed method.

Abstract (translated)

URL

https://arxiv.org/abs/2210.15960

PDF

https://arxiv.org/pdf/2210.15960.pdf


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