Skip to content

Latest commit

 

History

History
60 lines (60 loc) · 2.75 KB

2019-10-15-lei19a.md

File metadata and controls

60 lines (60 loc) · 2.75 KB
title crossref abstract layout series id month tex_title firstpage lastpage page order cycles bibtex_author author date address publisher container-title volume genre issued pdf extras
Fusing Recalibrated Features and Depthwise Separable Convolution for the Mangrove Bird Sound Classification
acml19
The bird community in the mangrove areas is an important component of the mangrove wetlands ecosystem and an indicator species for the assessment of the environmental health status of mangrove wetlands. The classification of bird species by the sound of bird in the mangrove areas has the advantages of less interference to the environment and wide monitoring range. In this paper, we propose a novel method that combines the feature recalibration mechanism with depthwise separable convolution for the mangrove bird sound classification. In the proposed method, we introduce Xception network in which depthwise separable convolution with lower parameter number and computational cost than traditional convolution can be stacked in a residual manner, as the baseline network. And we fuse the feature recalibration mechanism into the depthwise separable convolution for actively learning the weights of the feature channels in the network layer, so that we can enhance the important features in bird sound signals to improve the performance of the classification. In the proposed method, firstly we extract three-channel log-mel features of the bird sound signals and we introduce the mixup method to augment the extracted features. Secondly, we construct the recalibrated feature maps including the different scales of information to get the classification results. To verify the effectiveness of the proposed method, we build a dataset with 9282 samples including 25 kinds of the mangrove birds such as Egretta alba, Parus major, Charadrius dubius, etc. habiting in the mangroves of Fangcheng Port of China, and execute the experiments on the built dataset. Furthermore, we also validate the adaptability of our proposed method on the dataset of TAU Urban Acoustic Scenes 2019, and achieve a better result.
inproceedings
Proceedings of Machine Learning Research
lei19a
0
Fusing Recalibrated Features and Depthwise Separable Convolution for the Mangrove Bird Sound Classification
924
939
924-939
924
false
Lei, Chongqin and Gong, Weiguo and Wang, Zixu
given family
Chongqin
Lei
given family
Weiguo
Gong
given family
Zixu
Wang
2019-10-15
PMLR
Proceedings of The Eleventh Asian Conference on Machine Learning
101
inproceedings
date-parts
2019
10
15