SMART: Scene-motion-aware human action recognition framework for mental disorder group
Zengyuan Lai, Jiarui Yang, Songpengcheng Xia, Qi Wu, Zhen Sun, Wenxian, Yu, Ling Pei

TL;DR
This paper introduces SMART, a scene-motion-aware framework for human action recognition tailored to mental disorder patients, utilizing a new dataset and achieving high accuracy in diverse scenarios for healthcare monitoring.
Contribution
The paper develops a novel scene-motion-aware framework and a specialized dataset for recognizing abnormal actions in mental disorder patients, improving accuracy and generalizability.
Findings
Achieved 94.9% accuracy on unseen subjects
Outperformed state-of-the-art by 6.5%
Demonstrated strong scene and subject generalization
Abstract
Patients with mental disorders often exhibit risky abnormal actions, such as climbing walls or hitting windows, necessitating intelligent video behavior monitoring for smart healthcare with the rising Internet of Things (IoT) technology. However, the development of vision-based Human Action Recognition (HAR) for these actions is hindered by the lack of specialized algorithms and datasets. In this paper, we innovatively propose to build a vision-based HAR dataset including abnormal actions often occurring in the mental disorder group and then introduce a novel Scene-Motion-aware Action Recognition Technology framework, named SMART, consisting of two technical modules. First, we propose a scene perception module to extract human motion trajectory and human-scene interaction features, which introduces additional scene information for a supplementary semantic representation of the above…
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Taxonomy
TopicsHuman Pose and Action Recognition · Digital Mental Health Interventions · Mental Health Research Topics
