Department of Electronics Design, Mid Sweden University, 851 70 Sundsvall, Sweden.
Sensors (Basel). 2021 Sep 23;21(19):6349. doi: 10.3390/s21196349.
This paper presents a posture recognition system aimed at detecting sitting postures of a wheelchair user. The main goals of the proposed system are to identify and inform irregular and improper posture to prevent sitting-related health issues such as pressure ulcers, with the potential that it could also be used for individuals without mobility issues. In the proposed monitoring system, an array of 16 screen printed pressure sensor units was employed to obtain pressure data, which are sampled and processed in real-time using read-out electronics. The posture recognition was performed for four sitting positions: right-, left-, forward- and backward leaning based on k-nearest neighbors (k-NN), support vector machines (SVM), random forest (RF), decision tree (DT) and LightGBM machine learning algorithms. As a result, a posture classification accuracy of up to 99.03 percent can be achieved. Experimental studies illustrate that the system can provide real-time pressure distribution value in the form of a pressure map on a standard PC and also on a raspberry pi system equipped with a touchscreen monitor. The stored pressure distribution data can later be shared with healthcare professionals so that abnormalities in sitting patterns can be identified by employing a post-processing unit. The proposed system could be used for risk assessments related to pressure ulcers. It may be served as a benchmark by recording and identifying individuals' sitting patterns and the possibility of being realized as a lightweight portable health monitoring device.
本文提出了一种针对轮椅使用者坐姿检测的姿态识别系统。该系统的主要目标是识别和提醒不规律和不正确的坐姿,以预防与坐姿相关的健康问题,如压疮,同时也有可能适用于没有行动障碍的人群。在所提出的监测系统中,使用了 16 个阵列式的丝网印刷压力传感器单元来获取压力数据,这些数据通过读取电子设备进行实时采样和处理。坐姿识别基于 k-最近邻(k-NN)、支持向量机(SVM)、随机森林(RF)、决策树(DT)和 LightGBM 机器学习算法进行,针对四种坐姿位置进行:右倾、左倾、前倾和后倾。最终,坐姿分类准确率可达 99.03%。实验研究表明,该系统可以在标准 PC 上以压力图的形式实时提供压力分布值,也可以在配备触摸屏显示器的树莓派系统上提供。存储的压力分布数据可以稍后与医疗保健专业人员共享,以便通过后处理单元识别坐姿模式的异常。所提出的系统可用于评估与压疮相关的风险。它可以作为一种基准,记录和识别个人的坐姿模式,并有可能实现为轻便的便携式健康监测设备。