论文标题
朝着对象检测中的域概括
Towards Domain Generalization in Object Detection
论文作者
论文摘要
尽管在从相同或相似的分布中取样训练和测试数据时,现代探测器取得了惊人的性能,但在未知分布变化下检测器的概括能力仍未研究。最近,几项工作讨论了检测器对特定目标域的适应能力,这些能力不容易适用于现实世界中的应用程序,因为检测器可能会遇到各种环境或情况,同时在训练之前对所有这些环境或情况进行预购。在本文中,我们研究了关键问题,即对象检测中的域概括(DGOD),其中检测器接受了源域训练并在未知目标域上进行了评估。为了彻底评估未知分布变化下的探测器,我们制定了DGOD问题,并提出了全面的评估基准以填补空缺。此外,我们提出了一种名为“区域意识建议重新加权(RAPT)”的新颖方法,以消除ROI功能中的依赖性。广泛的实验表明,当前的DG方法无法解决DGOD问题,而我们的方法的表现优于其他最先进的问题。
Despite the striking performance achieved by modern detectors when training and test data are sampled from the same or similar distribution, the generalization ability of detectors under unknown distribution shifts remains hardly studied. Recently several works discussed the detectors' adaptation ability to a specific target domain which are not readily applicable in real-world applications since detectors may encounter various environments or situations while pre-collecting all of them before training is inconceivable. In this paper, we study the critical problem, domain generalization in object detection (DGOD), where detectors are trained with source domains and evaluated on unknown target domains. To thoroughly evaluate detectors under unknown distribution shifts, we formulate the DGOD problem and propose a comprehensive evaluation benchmark to fill the vacancy. Moreover, we propose a novel method named Region Aware Proposal reweighTing (RAPT) to eliminate dependence within RoI features. Extensive experiments demonstrate that current DG methods fail to address the DGOD problem and our method outperforms other state-of-the-art counterparts.