Aybora KöksalÖnder TuzcuoğluKutalmış Gökalp İnceYoldaş AtasevenA. Aydın Alatan
Hard example mining methods generally improve the performance of the object detectors, which suffer from imbalanced training sets. In this work, two existing hard example mining approaches (LRM and focal loss, FL) are adapted and combined in a state-of-the-art real-time object detector, YOLOv5. The effectiveness of the proposed approach for improving the performance on hard examples is extensively evaluated. The proposed method increases mAP by 3% compared to using the original loss function and around 1-2% compared to using the hard-mining methods (LRM or FL) individually on 2021 Anti-UAV Challenge Dataset.
Niranjan RaviMohamed El‐Sharkawy
SouYoung JinAruni RoyChowdhuryHuaizu JiangAshish SinghAditya PrasadDeep ChakrabortyErik Learned-Miller
Rui ZhuShifeng ZhangXiaobo WangLongyin WenHailin ShiLiefeng BoTao Mei
Renjie XuXinghao YangXingxing YaoDapeng TaoWeijia CaoXiaoping LuWeifeng Liu