Unsupervised domain adaptive person re-identification (ReID) has been extensively investigated to mitigate the adverse effects of domain gaps. Those works assume the target domain data can be accessible all at once. However, for the real-world streaming data, this hinders the timely adaptation to changing data statistics and sufficient exploitation of increasing samples. In this paper, to address more practical scenarios, we propose a new task, Lifelong Unsupervised Domain Adaptive (LUDA) person ReID. This is challenging because it requires the model to continuously adapt to unlabeled data of the target environments while alleviating catastrophic forgetting for such a fine-grained person retrieval task. We design an effective scheme for this task, dubbed CLUDA-ReID, where the anti-forgetting is harmoniously coordinated with the adaptation. Specifically, a meta-based Coordinated Data Replay strategy is proposed to replay old data and update the network with a coordinated optimization direction for both adaptation and memorization. Moreover, we propose Relational Consistency Learning for old knowledge distillation/inheritance in line with the objective of retrieval-based tasks. We set up two evaluation settings to simulate the practical application scenarios. Extensive experiments demonstrate the effectiveness of our CLUDA-ReID for both scenarios with stationary target streams and scenarios with dynamic target streams.
翻译:为了减轻领域差距的不利影响,广泛调查了不受监督的适应性个人再识别(ReID),以缓解域际差距的不利影响。这些工程假设目标域数据可以同时获得。然而,对于真实世界流数据,这妨碍了及时适应变化中的数据统计数据和足够利用增加的样本。在本文中,为了应对更实际的设想,我们提议一项新的任务,即“终身不受监督的适应性人再识别(REID)”,这是具有挑战性的,因为它要求模型不断适应目标环境的未标记数据,同时减轻灾难性地忘记这种细微的人检索任务。我们为这项任务设计了一个有效的计划,称为CLUDA-ReID-ReID, 在那里,反改换适应与适应和谐地协调。具体地说,我们提出一个基于元制的协调数据重现战略,在适应和记忆化方面以协调的优化方向更新网络。此外,我们提议为旧的知识再现/内置/内置的灾难性记忆性学习,以符合实际的回溯定位目标。我们用CUDA-Rroad 模拟了两个目标方案。