Oriented object detection emerges in many applications from aerial images to autonomous driving, while many existing detection benchmarks are annotated with horizontal bounding box only which is also less costive than fine-grained rotated box, leading to a gap between the readily available training corpus and the rising demand for oriented object detection. This paper proposes a simple yet effective oriented object detection approach called H2RBox merely using horizontal box annotation for weakly-supervised training, which closes the above gap and shows competitive performance even against those trained with rotated boxes. The cores of our method are weakly- and self-supervised learning, which predicts the angle of the object by learning the consistency of two different views. To our best knowledge, H2RBox is the first horizontal box annotation-based oriented object detector. Compared to an alternative i.e. horizontal box-supervised instance segmentation with our post adaption to oriented object detection, our approach is not susceptible to the prediction quality of mask and can perform more robustly in complex scenes containing a large number of dense objects and outliers. Experimental results show that H2RBox has significant performance and speed advantages over horizontal box-supervised instance segmentation methods, as well as lower memory requirements. While compared to rotated box-supervised oriented object detectors, our method shows very close performance and speed. The source code is available at https://github.com/yangxue0827/h2rbox-mmrotate and https://github.com/yangxue0827/h2rbox-jittor.
翻译:从空中图像到自主驱动的许多应用中都出现了定向物体探测,而许多现有探测基准则以水平约束框附加说明,但水平约束框的成本也比精细旋转框低,导致随时可得的训练文体与对定向物体探测的不断增长的需求之间存在差距。本文建议采用一种简单而有效的定向物体探测方法,即H2RBox,仅使用横向框注解,用于低度监督的培训,从而缩小上述差距,显示竞争性能,甚至与那些经过旋转的箱相比。我们方法的核心是薄弱的和自我监督的学习,通过学习两种不同观点的一致性来预测对象的角。根据我们的最佳知识,H2RBox是第一个以横向方框注解为基础的定向物体探测器。与我们之后适应定向物体探测的替代方法相比,我们的方法不易于对掩码的预测质量,并且可以在包含大量密度物体和外部对象的复杂场景中进行更稳健的测试。实验结果显示,H2RBox-Servidual-deroadoral 系统将显示我们现有的高级性能和高级度测试方法。