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首页> 外文期刊>Procedia Computer Science >Human Fall Detection from Depth Images using Position and Velocity of Subject
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Human Fall Detection from Depth Images using Position and Velocity of Subject

机译:人类坠落从使用主题的位置和速度的深度图像检测

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Fall detection and notification systems play an important role in our daily life, since human fall is a major health concern for many communities in today's aging population. There are different approaches used in developing human fall detection systems for elderly and people with special needs such as disable. The three basic approaches include some sort of wearable, non-wearable ambient sensor and vision based systems. This paper proposes a human fall detection system based on the velocity and position of the subject, extracted from Microsoft Kinect Sensor. Initially the subject and floor plane are extracted and tracked frame by frame. The tracked joints of the subject are then used to measure the velocity with respect to the previous location. Fall detection is confirmed using the position of the subject to see if all the joints are on the floor after an abnormal velocity. From the experimental results obtained, our system was able to achieve an average accuracy of 93.94% with a sensitivity of 100% and specificity of 91.3%.
机译:跌倒检测和通知系统在日常生活中发挥着重要作用,因为人类堕落是当今衰老人口中许多社区的重大健康问题。有不同的方法,用于为老年人和具有特殊需求的人开发人类坠落检测系统,如禁用。三种基本方法包括某种可穿戴,不可穿戴的环境传感器和基于视觉的系统。本文提出了一种基于受试者的速度和位置的人坠检测系统,从Microsoft Kinect传感器提取。最初通过框架提取和跟踪框架的主体和底板。然后使用受试者的跟踪关节来测量前一个位置的速度。使用主题的位置确认落后检测,以查看异常速度后的所有接头是否在地板上。从获得的实验结果来看,我们的系统能够达到93.94%的平均精度,灵敏度为100%,特异性为91.3%。

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