Jie-Bo HouXiaobin ZhuXu-Cheng Yin
Object detection is a significant and challenging problem in the study of remote sensing. Since remote sensing images are typically captured with a bird’s-eye view, the aspect ratios of objects in the same category may obey a Gaussian distribution. Generally, existing object detection methods ignore exploring the distribution character of aspect ratios for improving performance in remote sensing tasks. In this paper, we propose a novel Self-Adaptive Aspect Ratio Anchor (SARA) to explicitly explore aspect ratio variations of objects in remote sensing images. To be concrete, our SARA can self-adaptively learn an appropriate aspect ratio for each category. In this way, we can only utilize a simple squared anchor (related to the strides of feature maps in Feature Pyramid Networks) to regress objects in various aspect ratios. Finally, we adopt an Oriented Box Decoder (OBD) to align the feature maps and encode the orientation information of oriented objects. Our method achieves a promising mAP value of 79.91% on the DOTA dataset.
Kuiqi ChongJiulu GongNaiwei GuFenglin YinDerong ChenZepeng Wang
Yifan XiTing LuXudong KangShutao Li
Caiguang ZhangBoli XiongXiao LiGangyao Kuang
Jianxiang LiYan TianYiping XuZili Zhang
Miaohui ZhangYunzhong ChenXianxing LiuBingxue LvJun Wang