Forget Less, Count Better: A Domain-Incremental Self-Distillation Learning Benchmark for Lifelong Crowd Counting
Jiaqi Gao, Jingqi Li, Hongming Shan, Yanyun Qu, James Z. Wang, Fei-Yue, Wang, Junping Zhang

TL;DR
This paper introduces a lifelong crowd counting benchmark using self-distillation to reduce forgetting across domains, enhancing model generalization and efficiency in real-world, multi-domain scenarios.
Contribution
It proposes a novel self-distillation framework and a new metric for lifelong crowd counting, addressing catastrophic forgetting and domain shift issues.
Findings
The benchmark achieves low catastrophic forgetting.
The model demonstrates strong generalization across domains.
The new metric effectively measures forgetting.
Abstract
Crowd counting has important applications in public safety and pandemic control. A robust and practical crowd counting system has to be capable of continuously learning with the new incoming domain data in real-world scenarios instead of fitting one domain only. Off-the-shelf methods have some drawbacks when handling multiple domains: (1) the models will achieve limited performance (even drop dramatically) among old domains after training images from new domains due to the discrepancies of intrinsic data distributions from various domains, which is called catastrophic forgetting; (2) the well-trained model in a specific domain achieves imperfect performance among other unseen domains because of the domain shift; and (3) it leads to linearly increasing storage overhead, either mixing all the data for training or simply training dozens of separate models for different domains when new…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Fire Detection and Safety Systems · Anomaly Detection Techniques and Applications
