Arbitrary-oriented object detection (AOOD) has been widely applied to locate and classify objects with diverse orientations in remote sensing images. However, the inconsistent features for the localization and classification tasks in AOOD models may lead to ambiguity and low-quality object predictions, which constrains the detection performance. In this paper, an AOOD method called task-wise sampling convolutions (TS-Conv) is proposed. TS-Conv adaptively samples task-wise features from respective sensitive regions and maps these features together in alignment to guide a dynamic label assignment for better predictions. Specifically, sampling positions of the localization convolution in TS-Conv is supervised by the oriented bounding box (OBB) prediction associated with spatial coordinates. While sampling positions and convolutional kernel of the classification convolution are designed to be adaptively adjusted according to different orientations for improving the orientation robustness of features. Furthermore, a dynamic task-aware label assignment (DTLA) strategy is developed to select optimal candidate positions and assign labels dynamicly according to ranked task-aware scores obtained from TS-Conv. Extensive experiments on several public datasets covering multiple scenes, multimodal images, and multiple categories of objects demonstrate the effectiveness, scalability and superior performance of the proposed TS-Conv.
翻译:在遥感图像中,任意导向物体探测(AOOOD)被广泛用于定位和分类对象,其方向不同,遥感图像方向不同,但AOOD模型的定位和分类任务特征不一致,可能导致模糊和低质量的天体预测,从而制约探测性能。在本文件中,提议了一种AOOD方法,称为任务导向抽样变异(TS-Conv),来自各个敏感区域的TS-Conv适应性抽样任务特点,并对这些特征进行了统一,以指导动态标签分配,以更好地预测。具体地说,TS-Conv的本地化变异的取样位置由与空间坐标相关的定向约束框(OB)预测监督。虽然取样位置和分类变异的进化内核内核是为了根据不同方向进行调整的,以提高特征的方向稳健性。此外,还制定了动态任务定位(DTLA)战略,以选择最佳候选位置,并按从TS-Conv获得的任务识别分级的分级标签。在几个公共图像的高级性、多级图像的高级性、多级图像中进行广泛的实验。