论文标题
使用机器学习的可穿戴惯性测量单元对人体步态的接地接触估算
Estimation of Ground Contacts from Human Gait by a Wearable Inertial Measurement Unit using machine learning
论文作者
论文摘要
康复运动障碍和运动援助康复的机器人系统正在增加意图。在这种情况下,接地接触是机器人技术和医疗保健研究的活跃领域。本文根据胸部和下背部的IMU传感器数据,介绍了健康人步态期间左右脚的估计和分类。为此,我们通过在人体的胸部和下背部使用两台智能手机,并在身体的右脚踝右侧使用了一个智能手表,从而收集了48位受试者的IMU数据。为了显示我们的方法数据的鲁棒性,在六个不同的表面(路瓷砖地毯草混凝土和土壤)上收集了。根据右脚踝传感器数据,将下背部和胸部传感器的记录数据分为单个步骤,然后我们从每个分段步骤的时间频率和小波域中计算了408个功能。对于分类任务,我们已经使用10倍交叉验证方法培训了两个机器学习分类器SVM和RF。我们在单个表面,硬表面,软表面和所有表面上进行了分类实验,在单个表面上以98.88%的精度指数实现了最高精度。此外,硬软软和所有表面的分类率分别为95.60%,94.38%和95.05%。结果表明,可以使用角速度的6D数据和人体的胸部和下背部位置的6D数据进行高精度进行地面接触形式的正常人行走。
Robotics system for rehabilitation of movement disorders and motion assistance are gaining increased intention. In this scenario estimation of ground contact is an active area of research in robotics and healthcare. This article addresses the estimation and classification of right and left foot during the healthy human gait based on the IMU sensor data of chest and lower back. For this purpose we have collected an IMU data of 48 subjects by using two smartphones at chest and lower back of the human body and one smart watch at right ankle of the body. To show the robustness of our approach data was collected at six different surfaces (road tiles carpet grass concrete and soil). The recorded data of lower back and chest sensor was segmented into single steps on the basis of right ankle sensor data, then we computed a total of 408 features from time frequency and wavelet domain of each segmented step. For classification task we have trained two machine learning classifiers SVM and RF with 10 fold cross validation method. We performed classification experiments at individual surfaces, hard surfaces, soft surfaces and all surfaces, highest accuracy was achieved at individual surfaces with accuracy index of 98.88%. Furthermore, classification rate at hard soft and all surface are 95.60%, 94.38% and 95.05% respectively. The results shows that estimation of ground contact form normal human walk at different surfaces can be performed with high accuracy using 6D data of angular velocities and accelerations from chest and lower back location of the body.