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Vehicle Target Detection Method Based on Improved YOLO V3 Network Model

Qirong Zhang, Zhong Han,Yu Zhang

PeerJ Computer Science(2023)SCI 4区

Qiongtai Normal Univ

Cited 2|Views4
Abstract
For the problem of insufficient small target detection ability of the existing network model, a vehicle target detection method based on the improved YOLO V3 network model is proposed in the article. The improvement of the algorithm model can effectively improve the detection ability of small target vehicles in aerial photography. The optimization and adjustment of the anchor box and the improvement of the network residual module have improved the small target detection effect of the algorithm. Furthermore, the introduction of the rectangular prediction frame with orientation angles into the model of this article can improve the vehicle positioning efficiency of the algorithm, greatly reduce the problem of wrong detection and missed detection of vehicles in the model, and provide ideas for solving related problems. Experiments show that the accuracy rate of the improved algorithm model is 89.3%. Compared to the YOLO V3 algorithm, it is improved by 15.9%. The recall rate is improved by 16%, and the F1 value is also improved by 15.9%, which greatly increased the detection efficiency of aerial vehicles.
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Key words
YOLO V3,Vehicle detection,Model optimization,Aerial positioning
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要点】:本文提出了一种基于改进YOLO V3网络模型的车辆目标检测方法,通过优化锚框及网络残差模块,并引入带有方向角的矩形预测框,有效提升了小目标车辆检测能力及定位效率。

方法】:文章对YOLO V3网络模型进行了改进,调整了锚框并优化了网络残差模块。

实验】:通过实验,使用改进算法模型在车辆检测准确性上达到了89.3%,相比于原YOLO V3算法,准确率提高了15.9%,召回率提高了16%,F1值提高了15.9%。文中未提及具体使用的数据集名称。