Rotation detection is a challenging task due to the difficulties of locating the multi-angle objects and separating them effectively from the background. Though considerable progress has been made, for practical settings, there still exist challenges for rotating objects with large aspect ratio, dense distribution and category extremely imbalance. In this paper, we propose an end-to-end refined single-stage rotation detector for fast and accurate object detection by using a progressive regression approach from coarse to fine granularity. Considering the shortcoming of feature misalignment in existing refined single-stage detector, we design a feature refinement module to improve detection performance by getting more accurate features. The key idea of feature refinement module is to re-encode the position information of the current refined bounding box to the corresponding feature points through pixel-wise feature interpolation to realize feature reconstruction and alignment. For more accurate rotation estimation, an approximate SkewIoU loss is proposed to solve the problem that the calculation of SkewIoU is not derivable. Experiments on three popular remote sensing public datasets DOTA, HRSC2016, UCAS-AOD as well as one scene text dataset ICDAR2015 show the effectiveness of our approach. Tensorflow and Pytorch version codes are available at https://github.com/Thinklab-SJTU/R3Det_Tensorflow and https://github.com/SJTU-Thinklab-Det/r3det-on-mmdetection, and R3Det is also integrated in our open source rotation detection benchmark: https://github.com/yangxue0827/RotationDetection.
翻译:旋转探测是一项艰巨的任务,原因是难以定位多角天体并将其与背景有效分离。虽然在实际设置方面已经取得了相当大的进展,但对于具有大宽度比率、密集分布和分类极不平衡的物体,在旋转方面仍然存在挑战。在本文中,我们建议采用从粗略到细微颗粒的渐进回归法,为快速和准确的天体探测而使用一个端到端精细的单阶段旋转探测器。考虑到现有精细的单级探测器特征不匹配的缺点,我们设计了一个功能改进模块,通过获取更准确的功能来改进探测性能。功能改进模块的关键理念是通过像素特性的特性间插,将当前精细度捆绑框的位置信息重新编码到相应的特征点上,实现特性的重建与校正。为了更精确的旋转估计,我们提出了大约的SkewIoU损失,无法推断出SkewIOU的计算。在三种受欢迎的远程遥感公共数据集中进行实验, HR2016, UCAS-AODOD, 以及S-ODS-ODS-ODS 和Sion Syalental sqrent IARks/Turgyal drogs http/T.