Lifelong person re-identification (LReID) is in significant demand for real-world development as a large amount of ReID data is captured from diverse locations over time and cannot be accessed at once inherently. However, a key challenge for LReID is how to incrementally preserve old knowledge and gradually add new capabilities to the system. Unlike most existing LReID methods, which mainly focus on dealing with catastrophic forgetting, our focus is on a more challenging problem, which is, not only trying to reduce the forgetting on old tasks but also aiming to improve the model performance on both new and old tasks during the lifelong learning process. Inspired by the biological process of human cognition where the somatosensory neocortex and the hippocampus work together in memory consolidation, we formulated a model called Knowledge Refreshing and Consolidation (KRC) that achieves both positive forward and backward transfer. More specifically, a knowledge refreshing scheme is incorporated with the knowledge rehearsal mechanism to enable bi-directional knowledge transfer by introducing a dynamic memory model and an adaptive working model. Moreover, a knowledge consolidation scheme operating on the dual space further improves model stability over the long term. Extensive evaluations show KRC's superiority over the state-of-the-art LReID methods on challenging pedestrian benchmarks.
翻译:终身人再身份(LReID)是现实世界发展的重要需求,因为大量ReID数据是长期在不同地点收集的,无法同时获得,因此,对现实世界发展的需求很大。然而,LREID的一个关键挑战是如何逐步保存旧知识,逐步为系统增添新的能力。与大多数现有的LREID方法不同,这些方法主要侧重于处理灾难性的遗忘问题,我们的重点是一个更具挑战性的问题,即不仅试图减少对旧任务的遗忘,而且着眼于改进终身学习过程中新旧任务的模型性能。在人类认知的生物过程的启发下,在人类认知的生物过程下,在记忆整合中,我们开发了一个称为知识更新和整合(KRC)的模式,既能实现积极的前向转移,又能后向转移。更具体地说,我们把知识更新计划与知识演练机制结合起来,通过引入动态的记忆模型和适应性工作模式来进行双向知识转让。此外,在双重空间上运行的知识整合计划,在人类认知生物过程的生理过程中,在具有共生价值的优越性基准上,进一步改进了模型稳定性。