PointOBB-v2: Towards Simpler, Faster, and Stronger Single Point Supervised Oriented Object Detection

Ren, Botao, Yang, Xue, Yu, Yi, Luo, Junwei, Deng, Zhidong

arXiv.org Artificial Intelligence 

Single point supervised oriented object detection has gained attention and made initial progress within the community. SAM), PointOBB has shown promise due to its prior-free feature. In this paper, we propose PointOBBv2, a simpler, faster, and stronger method to generate pseudo rotated boxes from points without relying on any other prior. Specifically, we first generate a Class Probability Map (CPM) by training the network with non-uniform positive and negative sampling. We show that the CPM is able to learn the approximate object regions and their contours. Then, Principal Component Analysis (PCA) is applied to accurately estimate the orientation and the boundary of objects. By further incorporating a separation mechanism, we resolve the confusion caused by the overlapping on the CPM, enabling its operation in high-density scenarios. Extensive comparisons demonstrate that our method achieves a training speed 15.58 faster and an accuracy improvement of 11.60%/25.15%/21.19% on the DOTAv1.0/v1.5/v2.0 This significantly advances the cutting edge of single point supervised oriented detection in the modular track. Oriented object detection is essential for accurately labeling small and densely packed objects, especially in scenarios like remote sensing imagery, retail analysis, and scene text detection, where Oriented Bounding Boxes (OBBs) provide precise annotations.