Department of Aeronautics and Astronautics, Massachusetts Institute of Technology, 77 Massachusetts Avenue, Cambridge, MA 02139, USA.
Lincoln Laboratory, Massachusetts Institute of Technology, 244 Wood Street, Lexington, MA 02421-6426, USA.
Sensors (Basel). 2020 Dec 30;21(1):194. doi: 10.3390/s21010194.
The field of human activity recognition (HAR) often utilizes wearable sensors and machine learning techniques in order to identify the actions of the subject. This paper considers the activity recognition of walking and running while using a support vector machine (SVM) that was trained on principal components derived from wearable sensor data. An ablation analysis is performed in order to select the subset of sensors that yield the highest classification accuracy. The paper also compares principal components across trials to inform the similarity of the trials. Five subjects were instructed to perform standing, walking, running, and sprinting on a self-paced treadmill, and the data were recorded while using surface electromyography sensors (sEMGs), inertial measurement units (IMUs), and force plates. When all of the sensors were included, the SVM had over 90% classification accuracy using only the first three principal components of the data with the classes of stand, walk, and run/sprint (combined run and sprint class). It was found that sensors that were placed only on the lower leg produce higher accuracies than sensors placed on the upper leg. There was a small decrease in accuracy when the force plates are ablated, but the difference may not be operationally relevant. Using only accelerometers without sEMGs was shown to decrease the accuracy of the SVM.
人体活动识别(HAR)领域通常利用可穿戴传感器和机器学习技术来识别主体的动作。本文考虑使用基于从可穿戴传感器数据得出的主成分训练的支持向量机(SVM)来识别行走和跑步活动。进行了消融分析以选择产生最高分类准确性的传感器子集。本文还比较了跨试验的主成分,以了解试验的相似性。五个被试者被要求在自定步速的跑步机上进行站立、行走、跑步和冲刺,同时使用表面肌电图传感器(sEMG)、惯性测量单元(IMU)和力板记录数据。当包括所有传感器时,SVM 使用数据的前三个主成分(站立、行走和跑步/冲刺(跑步和冲刺组合类))的仅前三个主成分具有超过 90%的分类准确性。发现仅放置在小腿上的传感器比放置在上腿上的传感器产生更高的准确性。当消融力板时,准确性略有下降,但差异可能在操作上无关紧要。仅使用加速度计而不使用 sEMG 被证明会降低 SVM 的准确性。