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FGHDet:Delving into Fine-Grained Features with Head Selection for UAV Object Detection
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作者 Yan-Chao Bi Yang Ning +3 位作者 Xiu-Shan Nie Xian-Kai Lu Rui-Heng Zhang Huan-Long Zhang 《Journal of Computer Science & Technology》 2025年第5期1301-1315,共15页
Detecting small objects in unmanned aerial vehicle(UAV)imagery is a challenging and crucial task in computer vision.Most current methods struggle to address the challenges of small objects:fine-grained feature mining,... Detecting small objects in unmanned aerial vehicle(UAV)imagery is a challenging and crucial task in computer vision.Most current methods struggle to address the challenges of small objects:fine-grained feature mining,multiple-layer feature fusion,and mismatches in scale between anchors and feature maps.To alleviate the aforementioned issues,we present FGHDet,which focuses on delving into fine-grained features in low-level features with a head selection mechanism.First,our approach introduces a detail-preserving semantic information enhancement module(DSIEM)to retain fine-grained information while excavating coarse-grained semantic details relevant to fine-grained information.Then,we devise a coarse-to-fine feature guidance module(CFGM)that leverages coarse-grained semantic information and finegrained information to co-guide feature enhancement,further improving the model's classification ability.Finally,we introduce a multiscale detection strategy based on anchor-head matching,ensuring scale-level matching between anchors and feature maps to prevent overfitting due to overly fine anchor divisions.Extensive experiments on the VisDrone,CARPK,and Drone-vs.-Bird datasets demonstrate that FGHDet achieves notable improvements in mAP(IoU range[0.5:0.95])of 4.9,4.1,and 2.2,respectively.The code is available at https://github.com/b-yanchao/UAVDetection.git. 展开更多
关键词 anchor-head-based scale-level matching drone-view image fine-grained information extraction learning fine-grained semantics
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