An improved YOLO V3 for small vehicles detection in aerial images

Moran Ju, Haibo Luo, Zhongbo Wang
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引用次数: 1

Abstract

Small vehicle detection in aerial images is a challenge in computer vision because small vehicles occupy less pixels and the environment around the small vehicles is complex. To improve the detection performance for the vehicles in aerial images, we propose an improved YOLO V3. The main contributions of our work include: (1) We redesign the backbone of YOLO V3 to select suitable scales for small vehicle detection in aerial images; (2) To make the improved YOLO V3 much stronger, we redesign the loss function of original YOLO V3 by GIOU loss and Focal loss; (3) To verify the performance of improved YOLO V3, we do the comparative experiments on VEDAI dataset. The experimental results show that the proposed method has obtained better performance than original YOLO V3 for small vehicle detection in aerial image.
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改进的YOLO V3用于航拍图像中的小型车辆检测
航空图像中的小型车辆检测是计算机视觉中的一个挑战,因为小型车辆占用的像素较少,并且周围环境复杂。为了提高航拍图像中车辆的检测性能,我们提出了一种改进的YOLO V3。本文的主要贡献包括:(1)重新设计了YOLO V3的主干,选择了适合航拍图像中小型车辆检测的尺度;(2)为了使改进后的YOLO V3更强,我们通过GIOU损耗和Focal损耗对原YOLO V3的损失函数进行了重新设计;(3)为了验证改进的YOLO V3的性能,我们在VEDAI数据集上进行了对比实验。实验结果表明,该方法在航拍图像中对小型车辆的检测效果优于原来的YOLO V3。
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