Jinwen Luo, Yating Du, Yujie Wang, Chengmei Jiang, Caihua Yao, Xinyi Zhang, Leduan Wang, Deshan Cun, Qingyong Ni
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Enhancing Captive Welfare Management with Deep Learning: Video-Based Detection of Gibbon Behaviors Using YOWOvG.
Accurate monitoring of animal behavior is critical for assessing welfare and informing conservation strategies for vulnerable species like the eastern hoolock gibbon (Hoolock leuconedys). To overcome limitations of manual observation and single-frame analysis in captive settings, this study developed the first human-annotated spatiotemporal behavior dataset for this species and proposed YOWOvG, an improved deep learning model integrating the SE attention mechanism and GELAN for enhanced feature extraction. Trained on 69,919 labeled frames across four behaviors (Resting, Socializing, Climbing, Walking), YOWOvG achieved an 85.20% Frame-mAP in video-based recognition. This is a 6.3% improvement over the baseline result while maintaining computational efficiency. The model effectively captured temporal dynamics and spatial contexts, significantly improving recognition of climbing and walking despite data imbalances. The results demonstrate the potential of automated, noninvasive video monitoring to enhance welfare assessment in rescue centers by detecting subtle behavioral changes. Future work will expand behavioral categories, address stereotypic behaviors, and integrate audio cues for holistic monitoring. This approach provides a scalable framework for behavior-informed management of captive wildlife.
期刊介绍:
Journal of Applied Animal Welfare Science (JAAWS) publishes articles on methods of experimentation, husbandry, and care that demonstrably enhance the welfare of nonhuman animals in various settings. For administrative purposes, manuscripts are categorized into the following four content areas: welfare issues arising in laboratory, farm, companion animal, and wildlife/zoo settings. Manuscripts of up to 7,000 words are accepted that present new empirical data or a reevaluation of available data, conceptual or theoretical analysis, or demonstrations relating to some issue of animal welfare science. JAAWS also publishes brief research reports of up to 3,500 words that consist of (1) pilot studies, (2) descriptions of innovative practices, (3) studies of interest to a particular region, or (4) studies done by scholars who are new to the field or new to academic publishing. In addition, JAAWS publishes book reviews and literature reviews by invitation only.