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Intelligent identification system of wild animals image based on deep learning in biodiversity conservation law

Authors
Liang, XiaolongPan, DerunYu, Jiayi
Issue Date
Jun-2024
Publisher
IOS Press
Keywords
Deep learning; convolutional neural networks; intelligent identification of images; wild animals; dual-channel network; biodiversity conservation law
Citation
Journal of Computational Methods in Sciences and Engineering, v.24, no.3, pp 1523 - 1538
Pages
16
Indexed
SCOPUS
ESCI
Journal Title
Journal of Computational Methods in Sciences and Engineering
Volume
24
Number
3
Start Page
1523
End Page
1538
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/73852
DOI
10.3233/JCM-247185
ISSN
1472-7978
1875-8983
Abstract
This study aims to overcome the impact of complex environmental backgrounds on the recognition of wildlife in monitoring images, thereby exploring the role of a deep learning-based intelligent wildlife recognition system in biodiversity conservation. The automatic identification of wildlife images is conducted based on convolutional neural networks (CNNs). Target detection technology, based on regression algorithms, is initially employed to extract Regions of Interest (ROI) containing wildlife from images. The wildlife regions in monitoring images are detected, segmented, and converted into ROI images. A dual-channel network model based on Visual Geometry Group 16 (VGG16) is implemented to extract features from sample images. Finally, these features are input into a classifier to achieve wildlife recognition. The proposed optimized model demonstrates superior recognition performance for five wildlife species, caribou, lynx, mule deer, badger, and antelope, compared to the dual-channel network model based on VGG16. The optimized model achieves a Mean Average Precision (MAP) of 0.714, with a maximum difference of 0.145 compared to the other three network structures, affirming its effectiveness in enhancing the accuracy of automatic wildlife recognition. The model effectively addresses the issue of low recognition accuracy caused by the complexity of background information in monitoring images, achieving high-precision recognition and holding significant implications for the implementation of biodiversity conservation laws.
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