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Optimal Sensor Configuration for Activity Recognition during Whole-body Exercises

机译:全身锻炼期间活动识别的最佳传感器配置

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Advances in wearable devices with inertial measurement units (IMUs) for the detection of different motor activities and monitoring training tasks have important applications in tele-rehabilitation. These technologies can play an effective role in improving the quality of life for people with progressive movement disorders such as Parkinson's disease (PD). Considering cost, simplicity, and practicality, a smaller and more efficient number of IMUs that can accurately recognize the type of movement is preferable. The purpose of the current study was to design an affordable and accurate wearable device with IMUs to detect thirty four different motor activities in a customized training program called LSVT-BIG11Lee Silverman Voice Technique-Big https://www.lsvtglobal.com/LSVtbig[1], which is usually used for people with PD. Nine neurologically healthy individuals performed all 34 tasks. The collected data were processed in windows of 2.5 seconds. Eight features in time and frequency domains and discrete wavelet transforms were calculated. Dimension reduction was performed using the PCA22Principal Component Analysis algorithm. NM33Nearest Mean, RBF44Radial Basis Function, SVM55Support Vector Machine, and k-NN66k-Nearest Neighbors classifiers were then trained and used to recognize the activity. A genetic algorithm was utilized to decide which sensors and signals took part in the classification to produce the best accuracy. Our results showed that the four sensors installed on the left shank, right thigh, left forearm, and right arm provided the optimal number and arrangement to achieve a precision of 94.3% and sensitivity of 93.4% using NM classification. Also, an adaptation algorithm was utilized in order to maintain the quality of recognition for new users.
机译:具有惯性测量单元(IMU)的可穿戴设备的进步用于检测不同的电动机活动和监测培训任务在远程康复中具有重要应用。这些技术可以在提高帕金森病等渐进运动障碍(PD)等人的生活质量方面发挥有效作用。考虑到成本,简单性和实用性,可以准确地识别运动类型的较小和更有效的IMU是优选的。目前研究的目的是设计一种具有IMU的经济实惠和准确的可穿戴设备,以在称为LSVT-BIG的定制培训计划中检测三十四种不同的电机活动 1 1 Lee Silverman语音技术 - 大https://www.lsvtglobal.com/lsvtbig[1],通常用于PD的人。九个神经根学健康的个人进行了所有34个任务。收集的数据在2.5秒的窗口中处理。计算时间和频率域中的八个特征和离散小波变换。使用PCA进行尺寸减少 2 2 主成分分析算法。纳米 3 3 最接近的平均值,RBF 4 4 径向基功能,SVM 5 5 支持向量机,和K-Nn 6 6 然后培训K-Restend邻居分类器并用于识别活动。利用遗传算法来确定哪些传感器和信号在分类中参与以产生最佳精度。我们的研究结果表明,左柄上安装的四个传感器,右大腿,左前臂,右臂提供最佳数量和布置,以实现94.3%的精度,使用NM分类为93.4%的灵敏度。此外,利用适应算法以维持新用户的识别质量。

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