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Human Falling Detection Algorithm Based on Multisensor Data Fusion with SVM

机译:基于多传感器数据融合与SVM的人工下降检测算法

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Falling is a common phenomenon in the life of the elderly, and it is also one of the 10 main causes of serious health injuries and death of the elderly. In order to prevent falling of the elderly, a real-time fall prediction system is installed on the wearable intelligent device, which can timely trigger the alarm and reduce the accidental injury caused by falls. At present, most algorithms based on single-sensor data cannot accurately describe the fall state, while the fall detection algorithm based on multisensor data integration can improve the sensitivity and specificity of prediction. In this study, we design a fall detection system based on multisensor data fusion and analyze the four stages of falls using the data of 100 volunteers simulating falls and daily activities. In this paper, data fusion method is used to extract three characteristic parameters representing human body acceleration and posture change, and the effectiveness of the multisensor data fusion algorithm is verified. The sensitivity is 96.67%, and the specificity is 97%. It is found that the recognition rate is the highest when the training set contains the largest number of samples in the training set. Therefore, after training the model based on a large amount of effective data, its recognition ability can be improved, and the prevention of fall possibility will gradually increase. In order to compare the applicability of random forest and support vector machine (SVM) in the development of wearable intelligent devices, two fall posture recognition models were established, respectively, and the training time and recognition time of the models are compared. The results show that SVM is more suitable for the development of wearable intelligent devices.
机译:堕落是老年人生活中的一种常见现象,也是老年人严重健康伤害和死亡的10个主要原因之一。为了防止老人下降,可穿戴智能装置上安装了一个实时落后预测系统,可以及时触发警报并降低由跌落引起的意外伤害。目前,基于单传感器数据的大多数算法不能精确描述秋季状态,而基于多传感器数据集成的落后检测算法可以提高预测的灵敏度和特异性。在这项研究中,我们设计了一种基于多传感器数据融合的秋季检测系统,并使用100志愿者模拟下降和日常活动的数据分析跌落的四个阶段。在本文中,使用数据融合方法来提取表示人体加速度和姿势变化的三个特征参数,并且验证了多传感器数据融合算法的有效性。敏感性为96.67%,特异性为97%。发现识别率最高,培训集包含训练集中最多的样本数量。因此,在基于大量有效数据的基础上培训模型后,可以提高其识别能力,并且防止跌跌性可能会逐渐增加。为了比较随机森林和支持向量机(SVM)在可穿戴智能设备的开发中的适用性,分别建立了两个秋季姿势识别模型,比较了模型的训练时间和识别时间。结果表明,SVM更适合于可穿戴智能设备的开发。

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