基于轻量级人体动作识别的老年人安全实时监控

Han Sun, Yu Chen
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引用次数: 4

摘要

随着越来越多的老年人独居,远距离照顾成为一种迫切的需求,尤其是出于安全考虑。实时监控和动作识别是在发生异常行为或异常活动时及时发出警报的关键。虽然可穿戴传感器被广泛认为是一种很有前途的解决方案,但高度依赖于用户的能力和意愿使其效率低下。相比之下,通过非接触式光学相机收集的视频流提供了更丰富的信息,减轻了老年人的负担。本文利用独立循环神经网络(IndRNN)提出了一种基于轻量级人体动作识别(HAR)技术的老年人安全实时监测(REMS)。利用捕获的骨架图像,REMS方案能够识别异常行为或动作并保护用户的隐私。为了达到高精度,HAR模块使用多个数据库进行训练和微调。大量的实验研究验证了REMS系统能够准确、及时地进行动作识别。REMS达到了保护隐私的老年人安全监控系统的设计目标,具有在各种智能监控系统中采用的潜力。
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Real-Time Elderly Monitoring for Senior Safety by Lightweight Human Action Recognition
With an increasing number of elders living alone, care-giving from a distance becomes a compelling need, particularly for safety. Real-time monitoring and action recognition are essential to raise an alert timely when abnormal behaviors or unusual activities occur. While wearable sensors are widely recognized as a promising solution, highly depending on user’s ability and willingness makes them inefficient. In contrast, video streams collected through non-contact optical cameras provide richer information and release the burden on elders. In this paper, leveraging the Independently-Recurrent neural Network (IndRNN) we propose a novel Real-time Elderly Monitoring for senior Safety (REMS) based on lightweight human action recognition (HAR) technology. Using captured skeleton images, the REMS scheme is able to recognize abnormal behaviors or actions and preserve the user’s privacy. To achieve a high accuracy, the HAR module is trained and fine-tuned using multiple databases. An extensive experimental study verified that REMS system preforms action recognition accurately and timely. REMS meets the design goals as a privacy-preserving elderly safety monitoring system and possesses the potential to be adopted in various smart monitoring systems.
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