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首页> 外文期刊>Journal of NeuroEngineering Rehabilitation >Automatic identification of inertial sensor placement on human body segments during walking
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Automatic identification of inertial sensor placement on human body segments during walking

机译:在行走过程中自动识别惯性传感器在人体各部位的位置

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Background Current inertial motion capture systems are rarely used in biomedical applications. The attachment and connection of the sensors with cables is often a complex and time consuming task. Moreover, it is prone to errors, because each sensor has to be attached to a predefined body segment. By using wireless inertial sensors and automatic identification of their positions on the human body, the complexity of the set-up can be reduced and incorrect attachments are avoided. We present a novel method for the automatic identification of inertial sensors on human body segments during walking. This method allows the user to place (wireless) inertial sensors on arbitrary body segments. Next, the user walks for just a few seconds and the segment to which each sensor is attached is identified automatically. Methods Walking data was recorded from ten healthy subjects using an Xsens MVN Biomech system with full-body configuration (17 inertial sensors). Subjects were asked to walk for about 6 seconds at normal walking speed (about 5 km/h). After rotating the sensor data to a global coordinate frame with x-axis in walking direction, y-axis pointing left and z-axis vertical, RMS, mean, and correlation coefficient features were extracted from x-, y- and z-components and magnitudes of the accelerations, angular velocities and angular accelerations. As a classifier, a decision tree based on the C4.5 algorithm was developed using Weka (Waikato Environment for Knowledge Analysis). Results and conclusions After testing the algorithm with 10-fold cross-validation using 31 walking trials (involving 527 sensors), 514 sensors were correctly classified (97.5%). When a decision tree for a lower body plus trunk configuration (8 inertial sensors) was trained and tested using 10-fold cross-validation, 100% of the sensors were correctly identified. This decision tree was also tested on walking trials of 7 patients (17 walking trials) after anterior cruciate ligament reconstruction, which also resulted in 100% correct identification, thus illustrating the robustness of the method.
机译:背景技术当前的惯性运动捕获系统很少用于生物医学应用中。传感器与电缆的连接和连接通常是一项复杂且耗时的任务。此外,由于每个传感器必须连接到预定义的身体部位,因此容易出错。通过使用无线惯性传感器并自动识别其在人体上的位置,可以降低设置的复杂性并避免错误的附件。我们提出了一种新的方法,用于在行走过程中自动识别人体段上的惯性传感器。该方法允许用户将(无线)惯性传感器放置在任意身体部位上。接下来,用户只走了几秒钟,便自动识别出每个传感器所连接的部分。方法使用Xsens MVN Biomech系统(全身配置)(17个惯性传感器)记录来自十名健康受试者的步行数据。要求受试者以正常的步行速度(约5 km / h)步行约6秒钟。将传感器数据旋转到x轴沿行走方向的全局坐标系后,从x,y和z分量中提取y轴指向左,z轴指向垂直,RMS,均值和相关系数特征,然后加速度的大小,角速度和角加速度。作为分类器,使用Weka(Waikato知识分析环境)开发了基于C4.5算法的决策树。结果与结论使用31个步行试验(涉及527个传感器)对算法进行10倍交叉验证后,正确分类了514个传感器(97.5%)。当使用10倍交叉验证对下半身加后备箱配置(8个惯性传感器)的决策树进行训练和测试时,可以正确识别100%的传感器。还对前交叉韧带重建后的7例患者的步行试验(17项步行试验)进行了测试,以确保100%正确识别,从而证明了该方法的鲁棒性。

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