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Improvement of fall detection using consecutive-frame voting

机译:使用连续帧投票改进跌倒检测

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The Centers for Disease Control and Prevention (CDC) reported the older adult statistics that in every second there is an older adult fall down, 25% of elderly reported a fall in 2014, and it is the first cause of hip fracture in the USA. A fall accident detection system, which can automatically detect the fall accident and call for help, is essential for elderly. This paper proposes Improvement of Fall Detection Using Consecutive-frame Voting. The first step is human detection we propose background subtraction using a mixture of Gaussian models (MoG) combined with average filter model to implement the subtraction results. In feature extraction section, the orientation, aspect ratio and area ratio are calculated from the Principal Component Analysis (PCA) of a human silhouette. The moving object can be classified from the human centroid distance in human centroid tracking section. Each posture will be classified in event classification. Finally, majority voting of the results from consecutive is finally performed. The experimental results show improvement of the accuracy of the proposed method with our previous work which tested on the Le2i dataset.
机译:疾病控制与预防中心(CDC)报告了老年人的统计数据,即每秒钟都有一个老年人跌倒,2014年有25%的老年人报告跌倒,这是髋关节骨折的首个原因。美国。跌倒事故检测系统对老年人至关重要,该系统可以自动检测跌倒事故并寻求帮助。本文提出了使用连续帧投票的跌倒检测的改进方法。第一步是人体检测,我们建议使用高斯模型(MoG)与平均滤波器模型相结合的背景减法来实现减法结果。在特征提取部分,根据人体轮廓的主成分分析(PCA)计算方向,纵横比和面积比。可以从人质心跟踪部分中的人质心距离对运动物体进行分类。每个姿势都将在事件分类中进行分类。最后,最终对连续结果进行多数表决。实验结果表明,与我们先前在Le2i数据集上进行测试的工作相比,该方法的准确性有所提高。

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