Rotated object detection in aerial images is still challenging due to arbitrary orientations, large scale and aspect ratio variations, and extreme density of objects. Existing state-of-the-art rotated object detection methods mainly rely on angle-based detectors. However, angle regression can easily suffer from the long-standing boundary problem. To tackle this problem, we propose a purely angle-free framework for rotated object detection, called Point RCNN, which mainly consists of PointRPN and PointReg. In particular, PointRPN generates accurate rotated RoIs (RRoIs) by converting the learned representative points with a coarse-to-fine manner, which is motivated by RepPoints. Based on the learned RRoIs, PointReg performs corner points refinement for more accurate detection. In addition, aerial images are often severely unbalanced in categories, and existing methods almost ignore this issue. In this paper, we also experimentally verify that re-sampling the images of the rare categories will stabilize training and further improve the detection performance. Experiments demonstrate that our Point RCNN achieves the new state-of-the-art detection performance on commonly used aerial datasets, including DOTA-v1.0, DOTA-v1.5, and HRSC2016.
翻译:在空中图像中旋转物体的探测仍然由于任意定向、大比例和边比变化以及物体密度极高而具有挑战性。现有的最先进的旋转物体探测方法主要依靠角基探测器。然而,角回归很容易受到长期边界问题的影响。为了解决这一问题,我们提议一个纯粹的无角框架来进行旋转物体探测,称为RCNNN点,主要由PointRPN和PointReg组成。特别是,PointRPN通过将所学代表点转换成粗皮到fine的方式,产生精确旋转的RoIs(RroIs),其动因是Reppoints。基于所学的RRoIs、PointReg对角点进行改进,以便进行更精确的探测。此外,航空图像在类别中往往严重失衡,现有方法几乎忽略了这个问题。在本文中,我们还实验性地核实重新取样稀有类别的图像将稳定培训,并进一步改善探测性能。实验表明,我们的RCNNN在使用通用航空数据系统(包括DOTA-TA1.0、DOTA-TA)。