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Posture Detection Based on Smart Cushion for Wheelchair Users

机译:基于智能坐垫的轮椅用户姿态检测

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摘要

The postures of wheelchair users can reveal their sitting habit, mood, and even predict health risks such as pressure ulcers or lower back pain. Mining the hidden information of the postures can reveal their wellness and general health conditions. In this paper, a cushion-based posture recognition system is used to process pressure sensor signals for the detection of user’s posture in the wheelchair. The proposed posture detection method is composed of three main steps: data level classification for posture detection, backward selection of sensor configuration, and recognition results compared with previous literature. Five supervised classification techniques—Decision Tree (J48), Support Vector Machines (SVM), Multilayer Perceptron (MLP), Naive Bayes, and k-Nearest Neighbor (k-NN)—are compared in terms of classification accuracy, precision, recall, and F-measure. Results indicate that the J48 classifier provides the highest accuracy compared to other techniques. The backward selection method was used to determine the best sensor deployment configuration of the wheelchair. Several kinds of pressure sensor deployments are compared and our new method of deployment is shown to better detect postures of the wheelchair users. Performance analysis also took into account the Body Mass Index (BMI), useful for evaluating the robustness of the method across individual physical differences. Results show that our proposed sensor deployment is effective, achieving 99.47% posture recognition accuracy. Our proposed method is very competitive for posture recognition and robust in comparison with other former research. Accurate posture detection represents a fundamental basic block to develop several applications, including fatigue estimation and activity level assessment.
机译:轮椅使用者的姿势可以揭示他们的坐姿,情绪,甚至可以预测健康风险,例如压疮或下背痛。挖掘姿势的隐藏信息可以揭示它们的健康状况和总体健康状况。在本文中,基于缓冲的姿势识别系统用于处理压力传感器信号,以检测轮椅上用户的姿势。所提出的姿势检测方法包括三个主要步骤:姿势检测的数据级别分类,传感器配置的向后选择以及与以前文献相比的识别结果。比较了五种监督分类技术-决策树(J48),支持向量机(SVM),多层感知器(MLP),朴素贝叶斯和k最近邻(k-NN)-在分类准确性,精度,召回率,和F-measure。结果表明,与其他技术相比,J48分类器具有最高的准确性。向后选择方法用于确定轮椅的最佳传感器部署配置。对几种压力传感器展开进行了比较,并显示了我们的新展开方法可以更好地检测轮椅使用者的姿势。性能分析还考虑了体重指数(BMI),可用于评估该方法在各个物理差异之间的鲁棒性。结果表明,我们提出的传感器部署是有效的,达到99.47%的姿态识别精度。与其他以前的研究相比,我们提出的方法在姿势识别方面非常有竞争力,并且功能强大。准确的姿势检测是开发几种应用程序(包括疲劳估计和活动水平评估)的基本基本要素。

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