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A Data-Driven Monitoring Technique for Enhanced Fall Events Detection

机译:一种增强秋季事件检测的数据驱动监控技术

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Fall detection is a crucial issue in the health care of seniors. In this work, we propose an innovative method for detecting falls via a simple human body descriptors. The extracted features are discriminative enough to describe human postures and not too computationally complex to allow a fast processing. The fall detection is addressed as a statistical anomaly detection problem. The proposed approach combines modeling using principal component analysis modeling with the exponentially weighted moving average (EWMA) monitoring chart. The EWMA scheme is applied on the ignored principal components to detect the presence of falls. Using two different fall detection datasets, URFD and FDD, we have demonstrated the greater sensitivity and effectiveness of the developed method over the conventional PCA-based methods.
机译:堕落检测是前辈保健的重要问题。在这项工作中,我们提出了一种通过简单的人体描述符检测落下的创新方法。提取的特征是足够的识别性,以描述人类姿势,而不是过于计算的复杂,以允许快速处理。堕落检测被称为统计异常检测问题。所提出的方法使用主成分分析建模的建模与指数加权移动平均(EWMA)监测图相结合。 EWMA方案应用于忽略的主成分以检测跌落的存在。使用两个不同的秋季检测数据集,URFD和FDD,我们已经通过传统的PCA的方法证明了开发方法的更大灵敏度和有效性。

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