Orientation Estimation for Airplane Targets in SAR Images Based on Keypoint Detection

Xinyang Pu, He Jia, Yutong Qian, F. Xu
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Abstract

Object detection in aerial images is a challenging task since objects distribute in arbitrary orientations under the top view of remote sensing images (RSIs). Recent methods exploit oriented bounding boxes (OBB) to represent oriented objects accurately. However, airplane targets in different orientations appear very differently in Synthetic Aperture Radar (SAR) images due to the complicated imaging mechanism and various scattering conditions. Most SAR image datasets for airplanes are annotated with horizontal bounding boxes (HBB) and related research focuses on HBB without orientation information. This paper proposes a method for predicting the orientation of airplane targets in SAR images based on keypoints detection. Specifically, the object detection module is adopted to generate proposal regions of airplane targets in the first stage. Then, the proposal regions are utilized in the orientation prediction module to detect the head and tail of an airplane. The proposed method provides semantic orientation information for airplane targets in SAR images labeled by HBB. The experiments are conducted on Gaofen-3 (GF-3) dataset with labels of aircraft keypoints, and the accuracy of orientation estimation is achieved 85.8%. The Mean Average orientation Error is 18.24°. Furthermore, the orientation estimation model is applied on SAR Aircraft Detection Dataset (SADD) to supplement orientation information for airplane targets.
基于关键点检测的SAR图像中飞机目标方位估计
由于遥感图像俯视图下的目标呈任意方向分布,航空图像中的目标检测是一项具有挑战性的任务。最近的方法利用面向边界框(OBB)来精确地表示面向对象。然而,不同方位的飞机目标由于成像机理复杂,散射条件多样,在合成孔径雷达(SAR)图像中呈现出的图像差异很大。大多数飞机SAR图像数据集都使用水平边界框(HBB)进行标注,相关研究主要集中在没有方向信息的水平边界框上。提出了一种基于关键点检测的SAR图像中飞机目标方位预测方法。其中,第一阶段采用目标检测模块生成飞机目标建议区域。然后,在方向预测模块中利用建议区域检测飞机的头部和尾部。该方法可为HBB标记SAR图像中的飞机目标提供语义方向信息。在以飞机关键点为标签的高分3号数据集上进行了实验,估计精度达到了85.8%。平均定位误差为18.24°。在此基础上,将方向估计模型应用于SAR飞机探测数据集(SADD),对飞机目标的方向信息进行补充。
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