Fall detection using Gaussian mixture model and principle component analysis

Arisa Poonsri, W. Chiracharit
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引用次数: 20

Abstract

Fall accident whose rates increase exponentially is the major risk for the elderly, especially those living alone. A fall accident detection system to detect the fall accident and call for an emergency is essential for elderly. This paper proposes to extract human from a video camera using a mixture of Gaussian model combined with average filter models. The proposed method extracts six postures of physically movements of human including lying, sitting, standing, getting up, walking, and falling. Unique features such as inter-frames information, shape description from a silhouette aspect ratio, and orientation of principal component are obtained. The method could automatically alarm when the fall is detected. The experimental results show the detection rate up to 86.21% of the 58 videos from the Le2i dataset.
基于高斯混合模型和主成分分析的跌落检测
跌倒事故是老年人尤其是独居老人的主要危险,其发生率呈指数级增长。对于老年人来说,有一个摔倒事故检测系统来检测摔倒事故并呼叫紧急情况是必不可少的。本文提出了一种混合高斯模型与平均滤波模型相结合的摄像机人体图像提取方法。该方法提取了人体躺、坐、站、起、走、落六种身体运动姿势。获得帧间信息、轮廓宽高比的形状描述和主成分方向等独特特征。该方法可以在检测到坠落时自动报警。实验结果表明,在Le2i数据集的58个视频中,检测率高达86.21%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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