Sistem Deteksi Orang Jatuh Dengan Menggunakan Sensor Kamera Kinect Dengan Metode AdaBoost

Satria Perwira, M. I. A. Timur, Agus Harjoko
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Abstract

Fall cases of elderly people aged 65 or above put their health at risk because it could lead to hip bone fracture, concussion, even death. Immediate help is needed if fall happened which is why an automatic and unobtrusive fall detection system is needed. There are three approaches in fall detection system; wearable, ambience, and vision-based. Wearable approach has the drawback of its obtrusive nature while ambience approach is prone to high false positive value. Vision-based approach is chosen because its unobtrusive nature and low false positive value. This study uses Kinect camera because of its ability on extracting skeletal data. The methods that are used in the fall detection system are AdaBoost method and joint velocity thresholding method. Thresholding method is used as a comparison to AdaBoost method. Both methods use skeletal data from the subject recorded by the Kinect camera. AdaBoost method compares the skeletal data with model that was made before while thresholding method compares the joint velocity value with the threshold value. System test is done using training data, test data, and real-time data. The average accuracy obtained from the system test with AdaBoost method is 91.75% and with thresholding method is 68.22%.
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人类的探测系统使用了一种使用AdaBoost方法的运动相机传感器
65岁或以上老年人的跌倒病例将他们的健康置于危险之中,因为这可能导致髋部骨折、脑震荡,甚至死亡。如果发生跌倒,需要立即提供帮助,这就是为什么需要一个自动且不引人注目的跌倒检测系统。跌倒检测系统有三种方法;可穿戴、环境和视觉。可穿戴方法的缺点是其突兀的性质,而氛围方法容易产生高误报值。选择基于视觉的方法是因为它不引人注目,误报率低。这项研究使用了Kinect相机,因为它能够提取骨骼数据。跌倒检测系统中使用的方法有AdaBoost方法和联合速度阈值方法。阈值方法被用作与AdaBoost方法的比较。这两种方法都使用Kinect相机记录的受试者骨骼数据。AdaBoost方法将骨骼数据与之前制作的模型进行比较,而阈值方法将关节速度值与阈值进行比较。系统测试使用训练数据、测试数据和实时数据进行。AdaBoost方法和阈值方法的系统测试平均准确率分别为91.75%和68.22%。
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