Recent advances in unsupervised domain adaptation have significantly improved the recognition accuracy of CNNs by alleviating the domain shift between (labeled) source and (unlabeled) target data distributions. While the problem of single-target domain adaptation (STDA) for object detection has recently received much attention, multi-target domain adaptation (MTDA) remains largely unexplored, despite its practical relevance in several real-world applications, such as multi-camera video surveillance. Compared to the STDA problem that may involve large domain shifts between complex source and target distributions, MTDA faces additional challenges, most notably the computational requirements and catastrophic forgetting of previously-learned targets, which can depend on the order of target adaptations. STDA for detection can be applied to MTDA by adapting one model per target, or one common model with a mixture of data from target domains. However, these approaches are either costly or inaccurate. The only state-of-art MTDA method specialized for detection learns targets incrementally, one target at a time, and mitigates the loss of knowledge by using a duplicated detection model for knowledge distillation, which is computationally expensive and does not scale well to many domains. In this paper, we introduce an efficient approach for incremental learning that generalizes well to multiple target domains. Our MTDA approach is more suitable for real-world applications since it allows updating the detection model incrementally, without storing data from previous-learned target domains, nor retraining when a new target domain becomes available. Our proposed method, MTDA-DTM, achieved the highest level of detection accuracy compared against state-of-the-art approaches on several MTDA detection benchmarks and Wildtrack, a benchmark for multi-camera pedestrian detection.
翻译:在未受监督的领域适应方面最近取得的进展通过减轻(标签的)源与(标签的)目标数据分布之间的域变换,大大提高了CNN的识别准确性。虽然最近对目标探测的单一目标域调整(STDA)问题给予了极大关注,但多目标域调整(MTDA)问题仍然基本上没有得到探讨,尽管它在若干现实应用中具有实际意义,例如多摄像头视频监控。与STDA问题相比,它可能涉及复杂来源与目标分布之间的大型域变换,MTDA面临更多的挑战,其中最突出的是计算要求和灾难性地忘记先前获得的目标,这取决于目标调整的顺序。STDA用于检测的目标调整(STDA)的问题最近得到了很大的关注,而多目标领域调整(MDDD)问题则通过调整一个模型或一个共同模型(MDDDA)问题,尽管这些模型在多个现实应用中具有实际关联性,但只有最先进的MTDA方法才从渐进、一个目标一次目标变现,并且通过利用一个重复的识别模型来减轻知识损失,在不断变现的知识变现的知识变现的域中,而比一个目标升级的路径,这是我们以往的路径的路径,而逐渐地学习一个新的路径,一个新的路径,而使我们更接近于一个普通的轨道,一个新的路径,在以往的轨道上逐渐地学习了我们所研习进的轨道,一个新的路径。