基于压力数据的姿态和行为检测神经网络与系统

Jianzhong Qiu, C. Liu, Jun Wu, B. Zhao
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引用次数: 0

摘要

:在监测老年人行为的过程中,可穿戴设备和视觉设备容易受到场地和环境的限制,导致监测效果不佳。提出了一种基于压力数据的姿态行为检测方法和系统。采用卷积神经网络算法对压力数据进行识别,检测姿态,计算姿态保持时间和姿态变化频率,根据压力中心点轨迹判断姿态变化动作过程,最后记录并分析用户行为。本文所用模型的姿态分类正确率达到98.69%,姿态保持时间正确率达到98.06%。最终完成了相关监控系统的研发,可用于医疗和日常护理领域。
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Neural network and system for attitude and behavior detection based on pressure data
: In the process of monitoring the behavior of the elderly, wearable devices and visual devices are easily limited by the site and environment, resulting in poor monitoring results. This paper proposes a posture behavior detection method and system based on pressure data. The convolutional neural network algorithm is used to identify the pressure data to detect the posture, calculate the posture holding time and posture change frequency, judge the posture change action process according to the trajectory of the pressure center point, and finally record and analyze the user's behavior. The correct rate of pose classification of the model used in this paper has reached 98.69%, and the correct rate of pose retention time has reached 98.06%. Finally completed the research and development of the relevant monitoring system, which can be used in the field of medical treatment and daily care.
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