Detecting oriented objects along with estimating their rotation information is one crucial step for analyzing remote sensing images. Despite that many methods proposed recently have achieved remarkable performance, most of them directly learn to predict object directions under the supervision of only one (e.g. the rotation angle) or a few (e.g. several coordinates) groundtruth values individually. Oriented object detection would be more accurate and robust if extra constraints, with respect to proposal and rotation information regression, are adopted for joint supervision during training. To this end, we innovatively propose a mechanism that simultaneously learns the regression of horizontal proposals, oriented proposals, and rotation angles of objects in a consistent manner, via naive geometric computing, as one additional steady constraint (see Figure 1). An oriented center prior guided label assignment strategy is proposed for further enhancing the quality of proposals, yielding better performance. Extensive experiments demonstrate the model equipped with our idea significantly outperforms the baseline by a large margin to achieve a new state-of-the-art result without any extra computational burden during inference. Our proposed idea is simple and intuitive that can be readily implemented. Source codes and trained models are involved in supplementary files.
翻译:尽管最近提出的许多方法都取得了显著的性能,但大多数方法都直接学会在仅一个(例如旋转角度)或几个(例如几个坐标)地貌真实值的个别监督下预测物体方向。如果在培训期间采用与提议和旋转信息回归有关的额外限制来进行联合监督,则定向物体探测将更加准确和有力。为此,我们创新地提议了一个机制,通过天性几何计算,以一致的方式同时了解物体的横向提议、方向提议和旋转角度的倒退,作为另一个稳定的制约因素(见图1),用以进一步提升提议的质量,产生更好的性能,提出了面向方向的先前指导标签分配战略。广泛的实验表明,配有我们想法的模型大大超出基线,在推论期间没有额外的计算负担而实现新的状态结果。我们提议的构想是简单和直观的,可以很容易执行。源码和经过培训的模型涉及补充文件。