RLTIR: Activity-based Interactive Person Identification based on Reinforcement Learning Tree
Qingyang Li, Zhiwen Yu, Lina Yao, Bin Guo

TL;DR
This paper introduces RLTIR, an interactive identity recognition system that combines human expert feedback with reinforcement learning to adapt and improve biometric-based identification models dynamically.
Contribution
It presents the first integration of human expert guidance with reinforcement learning for activity-based identity recognition, enhancing model adaptability and accuracy.
Findings
Outperforms baseline methods in accuracy.
Improves robustness of identity recognition.
Enables dynamic model updates with human input.
Abstract
Identity recognition plays an important role in ensuring security in our daily life. Biometric-based (especially activity-based) approaches are favored due to their fidelity, universality, and resilience. However, most existing machine learning-based approaches rely on a traditional workflow where models are usually trained once for all, with limited involvement from end-users in the process and neglecting the dynamic nature of the learning process. This makes the models static and can not be updated in time, which usually leads to high false positive or false negative. Thus, in practice, an expert is desired to assist with providing high-quality observations and interpretation of model outputs. It is expedient to combine both advantages of human experts and the computational capability of computers to create a tight-coupling incremental learning process for better performance. In this…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Domain Adaptation and Few-Shot Learning · Human Pose and Action Recognition
