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首页> 外文期刊>Journal of medical systems >Accelerometer and Camera-Based Strategy for Improved Human Fall Detection
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Accelerometer and Camera-Based Strategy for Improved Human Fall Detection

机译:加速计和基于摄像头的策略可改善人体跌倒检测

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摘要

In this paper, we address the problem of detecting human falls using anomaly detection. Detection and classification of falls are based on accelerometric data and variations in human silhouette shape. First, we use the exponentially weighted moving average (EWMA) monitoring scheme to detect a potential fall in the accelerometric data. We used an EWMA to identify features that correspond with a particular type of fall allowing us to classify falls. Only features corresponding with detected falls were used in the classification phase. A benefit of using a subset of the original data to design classification models minimizes training time and simplifies models. Based on features corresponding to detected falls, we used the support vector machine (SVM) algorithm to distinguish between true falls and fall-like events. We apply this strategy to the publicly available fall detection databases from the university of Rzeszow's. Results indicated that our strategy accurately detected and classified fall events, suggesting its potential application to early alert mechanisms in the event of fall situations and its capability for classification of detected falls. Comparison of the classification results using the EWMA-based SVM classifier method with those achieved using three commonly used machine learning classifiers, neural network, K-nearest neighbor and naive Bayes, proved our model superior.
机译:在本文中,我们解决了使用异常检测来检测人类跌倒的问题。跌倒的检测和分类基于加速度数据和人体轮廓形状的变化。首先,我们使用指数加权移动平均值(EWMA)监视方案来检测加速度计数据中的潜在下降。我们使用EWMA来识别与特定类型的跌倒相对应的特征,从而可以对跌倒进行分类。分类阶段仅使用与检测到的跌倒相对应的特征。使用原始数据的子集来设计分类模型的好处是可以最大程度地减少训练时间并简化模型。基于与检测到的跌倒相对应的特征,我们使用了支持向量机(SVM)算法来区分真实跌倒和类似跌倒的事件。我们将此策略应用于热舒夫大学公开提供的跌倒检测数据库。结果表明,我们的策略可以准确地对跌倒事件进行检测和分类,这表明该策略在跌倒事件发生时可能会应用于早期预警机制中,并且可以对跌倒进行分类。使用基于EWMA的SVM分类器方法与使用三种常用的机器学习分类器(神经网络,K近邻和朴素贝叶斯)获得的分类结果进行比较,证明了我们的模型优越。

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