基于时间运动图像和多类支持向量机的特征空间人体跌倒检测方法

H. Foroughi, H. Yazdi, H. Pourreza, M. Javidi
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引用次数: 30

摘要

跌倒是老年人的主要健康危害,也是独立生活的严重障碍。由于跌倒会造成严重的生理和心理后果,因此开发智能视频监控系统非常重要,因为它可以提供安全的环境。为此,本文提出了一种基于积分时间运动图像和特征空间技术相结合的人体跌倒检测新方法。综合时间运动图像(ITMI)是一种包含运动和运动发生时间的时空数据库。将特征空间技术应用到ITMIs中,首先提取特征运动,最后利用多类支持向量机对运动进行精确分类,确定跌落事件。与现有的仅处理有限运动模式的跌倒检测系统不同,我们考虑了包括正常日常生活活动、异常行为和异常事件在内的广泛运动。实验结果的可靠识别率表明系统的性能令人满意。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An eigenspace-based approach for human fall detection using Integrated Time Motion Image and multi-class Support Vector Machine
Falls are a major health hazard for the elderly and a serious obstacle for independent living. Since falling causes dramatic physical-psychological consequences, development of intelligent video surveillance systems is so important due to providing safe environments. To this end, this paper proposes a novel approach for human fall detection based on combination of integrated time motion images and eigenspace technique. Integrated Time Motion Image (ITMI) is a type of spatio-temporal database that includes motion and time of motion occurrence. Applying eigenspace technique to ITMIs leads in extracting eigen-motion and finally multi-class Support Vector Machine is used for precise classification of motions and determination of a fall event. Unlike existent fall detection systems that only deal with limited movement patterns, we considered wide range of motions consisting of normal daily life activities, abnormal behaviors and also unusual events. Reliable recognition rate of experimental results underlines satisfactory performance of our system.
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