Oriented object detection in remote sensing images has made great progress in recent years. However, most of the current methods only focus on detecting targets, and cannot distinguish fine-grained objects well in complex scenes. In this technical report, we analyzed the key issues of fine-grained object recognition, and use an oriented feature alignment network (OFA-Net) to achieve high-performance fine-grained oriented object recognition in optical remote sensing images. OFA-Net achieves accurate object localization through a rotated bounding boxes refinement module. On this basis, the boundary-constrained rotation feature alignment module is applied to achieve local feature extraction, which is beneficial to fine-grained object classification. The single model of our method achieved mAP of 46.51\% in the GaoFen competition and won 3rd place in the ISPRS benchmark with the mAP of 43.73\%.
翻译:遥感图像中的定向物体探测近年来取得了巨大进展,但是,目前大多数方法仅侧重于探测目标,无法在复杂场景中很好地区分精细颗粒物体。在本技术报告中,我们分析了精细颗粒物体识别的关键问题,并使用了定向地物调整网络(OFA-Net),以便在光学遥感图像中实现高性能精细颗粒物体识别。OFA-Net通过一个旋转的捆绑箱改进模块实现了精确的物体定位。在此基础上,边界限制的旋转地物调整模块用于实现本地地物提取,这有利于精细颗粒物体分类。我们方法的单一模型在GaoFen竞争中达到了46.51 ⁇ 的MAAP,并在ISRS基准中赢得了43.73兆瓦的3位。**