IEICE Transactions on Information and Systems
Online ISSN : 1745-1361
Print ISSN : 0916-8532
Regular Section
Channel and Frequency Attention Module for Diverse Animal Sound Classification
Kyungdeuk KOJaihyun PARKDavid K. HANHanseok KO
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2019 Volume E102.D Issue 12 Pages 2615-2618

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Abstract

In-class species classification based on animal sounds is a highly challenging task even with the latest deep learning technique applied. The difficulty of distinguishing the species is further compounded when the number of species is large within the same class. This paper presents a novel approach for fine categorization of animal species based on their sounds by using pre-trained CNNs and a new self-attention module well-suited for acoustic signals The proposed method is shown effective as it achieves average species accuracy of 98.37% and the minimum species accuracy of 94.38%, the highest among the competing baselines, which include CNN's without self-attention and CNN's with CBAM, FAM, and CFAM but without pre-training.

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© 2019 The Institute of Electronics, Information and Communication Engineers
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