航空图像中定向目标检测的RoI变换学习

Jian Ding, Nan Xue, Yang Long, Guisong Xia, Qikai Lu
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引用次数: 521

摘要

航空图像中的目标检测是计算机视觉领域中一个活跃而又具有挑战性的任务,因为航空图像具有鸟瞰视角、高度复杂的背景和多变的物体外观。特别是在检测航空图像中密集堆积的目标时,依赖于水平建议的通用目标检测方法往往会引入兴趣区域(roi)与目标之间的不匹配。这导致了最终目标分类置信度和定位精度之间的不一致。在本文中,我们提出了一个RoI变压器来解决这些问题。RoI Transformer的核心思想是对RoI进行空间变换,并在定向边界框(OBB)注释的监督下学习变换参数。RoI Transformer重量轻,可以很容易地嵌入到检测器中进行定向对象检测。RCNN在两个常见且具有挑战性的航空数据集(即DOTA和HRSC2016)上取得了最先进的性能,而检测速度的降低可以忽略不计。当定向边界框注释可用时,我们的RoI Transformer超过了可变形的位置敏感RoI池。大量的实验也验证了我们的RoI变压器的灵活性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning RoI Transformer for Oriented Object Detection in Aerial Images
Object detection in aerial images is an active yet challenging task in computer vision because of the bird’s-eye view perspective, the highly complex backgrounds, and the variant appearances of objects. Especially when detecting densely packed objects in aerial images, methods relying on horizontal proposals for common object detection often introduce mismatches between the Region of Interests (RoIs) and objects. This leads to the common misalignment between the final object classification confidence and localization accuracy. In this paper, we propose a RoI Transformer to address these problems. The core idea of RoI Transformer is to apply spatial transformations on RoIs and learn the transformation parameters under the supervision of oriented bounding box (OBB) annotations. RoI Transformer is with lightweight and can be easily embedded into detectors for oriented object detection. Simply apply the RoI Transformer to light head RCNN has achieved state-of-the-art performances on two common and challenging aerial datasets, i.e., DOTA and HRSC2016, with a neglectable reduction to detection speed. Our RoI Transformer exceeds the deformable Position Sensitive RoI pooling when oriented bounding-box annotations are available. Extensive experiments have also validated the flexibility and effectiveness of our RoI Transformer.
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