End-to-end recognition of nighttime wildlife based on semi-supervised learning
Information Sciences|更新时间:2025-04-17
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End-to-end recognition of nighttime wildlife based on semi-supervised learning
“In the field of nocturnal target detection for wildlife, researchers have proposed an end-to-end recognition model SAN-YOLO based on semi supervised learning, which effectively improves detection accuracy and efficiency.”
Optics and Precision EngineeringVol. 33, Issue 5, Pages: 789-801(2025)
LU Han,CUI Bolun,WAN Huayang,et al.End-to-end recognition of nighttime wildlife based on semi-supervised learning[J].Optics and Precision Engineering,2025,33(05):789-801.
LU Han,CUI Bolun,WAN Huayang,et al.End-to-end recognition of nighttime wildlife based on semi-supervised learning[J].Optics and Precision Engineering,2025,33(05):789-801. DOI: 10.37188/OPE.20253305.0789. CSTR: 32169.14.OPE.20253305.0789.
End-to-end recognition of nighttime wildlife based on semi-supervised learning
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