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A HOG-SVM Based Fall Detection IoT System for Elderly Persons Using Deep Sensor

机译:基于HOG-SVM基于DEACE传感器的老年人的秋季检测IOT系统

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The population of elderly persons continues to grow at a high rate, and fall accidents in elderly persons have become a major public health problem. Highly developed IoT technology and machine learning enable the use of multimedia devices in a wide variety of elderly person’s protection areas. In this paper, a HOG-SVM based fall detection IoT system for elderly persons is proposed. To ensure privacy and in order to be robust to changes of the light intensity, deep sensor is employed instead of RGB camera to get the binary images of elderly persons. The persons are detected and tracked by Microsoft Kinect SDK, and the unwanted noise is reduced by noise reduction algorithm. After obtaining the denoised binary images, the features of persons are extracted by histogram of oriented gradient and the image classification is performed for judging the fall status by the liner support vector machine. If a fall is detected, the IoT system sends alert to the hospital or family members. This study builds a data set which includes 3500 images, and the experimental results show that the proposed method outperforms related works in terms of accuracy.
机译:老年人的人口继续以高速增长,老年人的堕落事故已成为一个主要的公共卫生问题。高度发达的物联网技术和机器学习使得在各种老年人的保护区中使用多媒体设备。本文提出了一种基于HOG-SVM用于老年人的秋季检测物联网系统。为了确保隐私,并且为了使光强度的变化变化,使用深度传感器而不是RGB相机来获得老年人的二进制图像。通过Microsoft Kinect SDK检测和跟踪人员,通过降噪算法减少了不需要的噪声。在获得去噪二进制图像之后,通过定向梯度的直方图提取人的特征,并且执行图像分类以判断衬里支持向量机的落下状态。如果检测到跌倒,则物联网系统向医院或家庭成员发送警报。本研究构建了包括3500图像的数据集,实验结果表明,所提出的方法在准确性方面优于相关的工作。

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