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An SVM fall recognition algorithm based on a gravity acceleration sensor

机译:一种基于重力加速度传感器的SVM落区识别算法

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摘要

To address the increasing health care needs for an ageing population, in this paper, a method of detecting human movements using smartphones is proposed to decrease the risk of accidents in the elderly. The method proposed in this paper uses a mobile phone that has an embedded acceleration sensor to record human motion information that are divided into daily activities (walking, running, going up stairs, going down stairs, and standing still) and falling down. In the process of data acquisition, motion noise contains some interference, and thus the median filter is employed to de-noise and smooth the motion data. Moreover, we extract representative multi-group features and analyse the features by principal component analysis and singular value decomposition to reduce dimensions. Through experimental comparisons with various classifiers, the support vector machine classifier is selected to classify the extracted features. The accuracy of fall detection reached 96.072%, which proved the accuracy of our proposed method.
机译:为了解决衰老人口的日益增长的需求,本文提出了一种检测使用智能手机的人类运动的方法,以降低老年人事故的风险。本文提出的方法使用具有嵌入式加速度传感器的移动电话,以记录分为日常活动的人类运动信息(行走,跑步,上楼梯,下楼梯和站立)并落下。在数据采集的过程中,运动噪声包含一些干扰,因此使用中值滤波器来解除噪声并平滑运动数据。此外,我们提取代表性多组特征,并通过主成分分析和奇异值分解来分析特征,以减少维度。通过具有各种分类器的实验比较,选择支持向量机分类器来分类提取的特征。下跌检测的准确性达到96.072%,证明了我们提出的方法的准确性。

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