Insights from Deep Learning in Feature Extraction for Non-supervised Multi-species Identification in Soundscapes

被引:0
|
作者
Guerrero, Maria J. [1 ]
Restrepo, Jonathan [1 ]
Nieto-Mora, Daniel A. [2 ]
Daza, Juan M. [3 ]
Isaza, Claudia [1 ]
机构
[1] Univ Antioquia, Fac Ingn, SISTEMIC, Calle 70 52-21, Medellin, Colombia
[2] Inst Tecnolog Metropolitano, MIRP Maquinas Inteligentes Reconocimiento Patrone, Calle 54A 30-99, Medellin, Colombia
[3] Univ Antioquia, Inst Biol, Grp Herpetolog Antioquia, Calle 70 52-21, Medellin, Colombia
来源
ADVANCES IN ARTIFICIAL INTELLIGENCE-IBERAMIA 2022 | 2022年 / 13788卷
关键词
Feature extraction; Deep learning; Multi-species identification; Biodiversity monitoring; Soundscape;
D O I
10.1007/978-3-031-22419-5_19
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Biodiversity monitoring has taken a relevant role in conservation management plans, where several methodologies have been proposed to assess biological information of landscapes. Recently, soundscape studies have allowed biodiversity monitoring by compiling all the acoustic activity present in landscapes in audio recordings. Automatic species detection methods have shown to be a practical tool for biodiversity monitoring, providing insight into the acoustic behavior of species. Generally, the proposed methodologies for species identification have four main stages: signal pre-processing, segmentation, feature extraction, and classification. Most proposals use supervised methods for species identification and only perform for a single taxon. In species identification applications, performance depends on extracting representative species features. We present a feature extraction analysis for multi-species identification in soundscapes using unsupervised learning methods. Linear frequency cepstral coefficients (LFCC), variational autoencoders (VAE), and the KiwiNet architecture, which is a convolutional neural network (CNN) based on VGG19, were evaluated as feature extractors. LFCC is a frequency-based method, while VAE and KiwiNet belong to the deep learning area. In ecoacoustic applications, frequency-based methods are the most widely used. Finally, features were tested by a clustering algorithm that allows species recognition from different taxa. The unsupervised approaches performed multi-species identification between 78%-95%.
引用
收藏
页码:218 / 230
页数:13
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