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Waterbird image recognition using lightweight deep learning in wetland environment

摘要Wetland waterbirds serve as key ecological indicators for assessing habitat quality and biodiversity.Accurate identification of waterbird species is a cornerstone of long-term ecological monitoring.The resulting data are critical for assessing wetland ecosystem health and biodiversity.However,prevailing recognition approaches often prioritize detection accuracy at the expense of computational efficiency.They are also hindered by complex background heterogeneity and interspecies visual similarity.These limitations hinder the scalability and prac-tical deployment of such methods for on-site ecological monitoring within wetland ecosystems.To address these challenges,this study proposes an optimized end-to-end framework,ShuffleNetV2-iRMB-ShapeIoU-YOLO(SIS-YOLO),designed for robust recognition of wetland waterbirds in complex environments.Specifically,the pro-posed framework integrates ShuffleNetV2 with inverted Residual Mobile Blocks(iRMB)to improve computa-tional efficiency while maintaining robust feature representation.This design further enables deployment on resource-constrained mobile and embedded platforms.Additionally,ShapeIoU,a refined bounding box simi-larity metric,is introduced to jointly optimize overlap and shape consistency,effectively mitigating misclassi-fication among visually similar species.Experimental results on the IC-Beijing dataset show that SIS-YOLO achieves 91.1%precision and 79.1%mAP@0.5:0.95 with only 2.9 million parameters.Compared with the lightweight baseline YOLOv8n,it improves precision by 2%and mAP@0.5:0.95 by 1.2%,while requiring fewer parameters and offering higher computational efficiency.

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作者 Qingquan Huang [1] Changchun Zhang [2] Chunhe Hu [2] Jiangjian Xie [2] Yuan Wang [2] Junguo Zhang [2] 学术成果认领
作者单位 School of Technology,Beijing Forestry University,Beijing,100083,China [1] School of Technology,Beijing Forestry University,Beijing,100083,China;State Key Laboratory of Efficient Production of Forest Resources,Beijing Forestry University,Beijing,100083,China;Research Center for Biodiversity Intelligent Monitoring,Beijing Forestry University,Beijing,100083,China [2]
DOI 10.1016/j.avrs.2025.100306
发布时间 2025-12-01(万方平台首次上网日期,不代表论文的发表时间)
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