We classify the discontinuity of loss in both five-param and eight-param rotated object detection methods as rotation sensitivity error (RSE) which will result in performance degeneration. We introduce a novel modulated rotation loss to alleviate the problem and propose a rotation sensitivity detection network (RSDet) which is consists of an eight-param single-stage rotated object detector and the modulated rotation loss. Our proposed RSDet has several advantages: 1) it reformulates the rotated object detection problem as predicting the corners of objects while most previous methods employ a five-para-based regression method with different measurement units. 2) modulated rotation loss achieves consistent improvement on both five-param and eight-param rotated object detection methods by solving the discontinuity of loss. To further improve the accuracy of our method on objects smaller than 10 pixels, we introduce a novel RSDet++ which is consists of a point-based anchor-free rotated object detector and a modulated rotation loss. Extensive experiments demonstrate the effectiveness of both RSDet and RSDet++, which achieve competitive results on rotated object detection in the challenging benchmarks DOTA1.0, DOTA1.5, and DOTA2.0. We hope the proposed method can provide a new perspective for designing algorithms to solve rotated object detection and pay more attention to tiny objects. The codes and models are available at: https://github.com/yangxue0827/RotationDetection.
翻译:我们把5个参数和8个参数旋转的物体探测方法中的损失不连续列为旋转敏感度误差(RSE),这将导致性能退化。我们引入了一种新型的调制旋转损失损失,以缓解问题,并提出一个由8个参数单阶段旋转的物体探测器和调制旋转损失组成的旋转敏感度探测网络(RSDet)。我们提议的RSDet有若干优点:1)它把旋转的物体探测问题重新定义为预测物体角,而大多数以前的方法则采用5个参数基回归法,使用不同的测量单位。2 调制的旋转损失通过解决损失的不连续性,使5个参数和8个参数旋转的物体探测方法得到一致的改进。为了进一步提高我们对小于10个像素的物体采用的方法的准确性,我们采用了一个新的RSDet++,它由基于点的无锚旋转的物体探测器和调制的旋转轨道物体探测器组成。广泛的实验显示RSDet 和 RSDD+++,在旋转的物体探测上取得竞争性的结果,在旋转的检测中,我们提出的DO1.0 和变换代算法中,我们提出的对DTA的检验的检验方法提供了一种比较的检验标准。