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首页> 外文期刊>American journal of applied sciences >Elderly People Fall Detection System Using Skeleton Tracking and Recognition
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Elderly People Fall Detection System Using Skeleton Tracking and Recognition

机译:使用骨骼跟踪和识别的老人落下检测系统

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摘要

The fall detection systems use a variety of technologies like sensors, wearable devices, color camera, thermal camera etc. With the use of Microsoft Kinect camera for non-gaming purposes, depth images have started being utilized for fall detection. Various authors have made an attempt at using Kinect for fall detection in combination with a variety of techniques like ellipse analysis, bounding box analysis etc. However, most of these attempts fail to differentiate between human subjects and other inanimate objects and fail to identify the person who has fallen while assuming that there is only one person who needs to be monitored. This paper proposes a new system that is based on the depth images captured by Microsoft Kinect, skeleton tracking and bounding box analysis. The key novelty of this system is that it wraps the moving object into the bounding box and determines the change of size of the moving object by analysis the motion over the time to distinguish the human moving object and non-human moving object. The system stores the joint measurements of the known people in a database and compares the joint measurements of the detected person with the values in the database to identify the person. The proposed solution provides a significantly higher accuracy rate as compared to the current best solution and especially when the person carrying an object, sweeping the floor, dropping an object and picking an object from the floor.
机译:跌倒检测系统使用各种技术,如传感器,可穿戴设备,彩色摄像机,热摄像机等。使用Microsoft Kinect相机进行非游戏目的,深度图像开始用于坠落检测。各种作者已经尝试使用Kinect进行坠落检测,结合各种技术,如椭圆分析,边界框分析等。然而,大多数这些尝试都无法区分人类受试者和其他无生命物体,并且无法识别该人谁在假设只有一个人需要被监控的同时下降。本文提出了一种基于Microsoft Kinect,骨架跟踪和边界框分析捕获的深度图像的新系统。该系统的关键新颖之处在于将移动物体包裹在边界框中,并通过分析运动的运动来确定移动物体的大小的变化,以区分人移动物体和非人类移动物体。该系统将已知人员的联合测量存储在数据库中,并将检测到的人的联合测量与数据库中的值进行比较以识别该人。与当前最佳解决方案相比,所提出的解决方案提供了明显更高的准确率,特别是当携带物体的人扫过地板,滴下物体并从地板上挑选物体。

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