Domain adaptive object detection (DAOD) is a promising way to alleviate performance drop of detectors in new scenes. Albeit great effort made in single source domain adaptation, a more generalized task with multiple source domains remains not being well explored, due to knowledge degradation during their combination. To address this issue, we propose a novel approach, namely target-relevant knowledge preservation (TRKP), to unsupervised multi-source DAOD. Specifically, TRKP adopts the teacher-student framework, where the multi-head teacher network is built to extract knowledge from labeled source domains and guide the student network to learn detectors in unlabeled target domain. The teacher network is further equipped with an adversarial multi-source disentanglement (AMSD) module to preserve source domain-specific knowledge and simultaneously perform cross-domain alignment. Besides, a holistic target-relevant mining (HTRM) scheme is developed to re-weight the source images according to the source-target relevance. By this means, the teacher network is enforced to capture target-relevant knowledge, thus benefiting decreasing domain shift when mentoring object detection in the target domain. Extensive experiments are conducted on various widely used benchmarks with new state-of-the-art scores reported, highlighting the effectiveness.
翻译:在新场景中,尽管在单一源域适应方面做出了巨大努力,但由于多种源域的知识退化,目前仍未很好地探索出一项涉及多个源域的更为普遍的任务。为了解决这一问题,我们提议了一种新颖的办法,即目标相关知识保护(TRKP),到不受监督的多源DAD。具体地说,TRKP采用教师-学生框架,即多头教师网络,从标签源域中提取知识,并指导学生网络学习未标目标域内的探测器。教师网络进一步配备了对抗性多源分离模块,以保存源域特定知识,同时进行跨界对齐。此外,还制定了一个整体目标相关采矿(HTRM)计划,根据源目标相关性重新加权源图像。通过这一手段,教师网络将获取目标相关知识,从而在目标域内指导对象探测时使域变换得越来越少。广泛使用的多源源分离模型显示各种新基准,并报告使用新的标准。