第25回応用力学シンポジウム

Presentation information

Regular Session

General Session (5.応用数理問題―計算機科学から社会科学まで)

第5部門①

Sat. May 28, 2022 9:00 AM - 10:15 AM Meeting room E (Online)

座長:松岡 弘大(公益財団法人鉄道総合技術研究所)

9:30 AM - 9:45 AM

[2E01-05-03] Study on Data Augmentation Method for Detecting a Wood Broken Sound by using CNN

*Mayuko ONO1, Tsukasa TAKEMORI1, Masayuki SAEKI1 (1. Tokyo University of Science)

Keywords:Convolutional Neural Network, wood broken sound, data augmentation

The objective of this study is to find out the effective data augmentation method for detecting a wood broken sound by using CNN. In this study, the time stretching of sound and the noise addition are investigated as a data augmentation method. The simulation results show that those methods are very effective in improving the detection accuracy in case that the test and learning data are recorded in the same environment. On the other hand, the use of sounds recorded in various environments is needed to improve the accuracy in case of testing sounds recorded in different environment.