The region proposal task is to generate a set of candidate regions that contain an object. In this task, it is most important to propose as many candidates of ground-truth as possible in a fixed number of proposals. In a typical image, however, there are too few hard negative examples compared to the vast number of easy negatives, so region proposal networks struggle to train on hard negatives. Because of this problem, networks tend to propose hard negatives as candidates, while failing to propose ground-truth candidates, which leads to poor performance. In this paper, we propose a Negative Region Proposal Network(nRPN) to improve Region Proposal Network(RPN). The nRPN learns from the RPN's false positives and provide hard negative examples to the RPN. Our proposed nRPN leads to a reduction in false positives and better RPN performance. An RPN trained with an nRPN achieves performance improvements on the PASCAL VOC 2007 dataset.
翻译:区域提案的任务是产生一组包含一个目标的候选区域。在这一任务中,最重要的是在固定数量的提案中提出尽可能多的地面真实性候选人。然而,在典型的印象中,与大量简单消极性相比,实际负面性的例子太少,因此,区域提案网络努力在硬负面性能上进行培训。由于这一问题,网络往往以候选人的形式提出硬负面性能,而没有提出地面真实性能候选人,从而导致业绩不佳。在本文中,我们提议建立一个负区域提案网络,以改善区域提案网络。NRPN从RPN的假正性中学习,并向RPN提供硬性负面的例子。我们提议的NPN导致假正性下降,并改进RPN的表现。一个接受NRPN培训的RPN在PACL VOC 2007数据集上取得了业绩改进。