By observing the actions taken by operators, it is possible to determine the risk level of a work task. One method for achieving this is the recognition of human activity using biosignals and inertial measurements provided to a machine learning algorithm performing such recognition. The aim of this research is to propose a method to automatically recognize physical exertion and reduce noise as much as possible towards the automation of the Job Strain Index (JSI) assessment by using a motion capture wearable device (MindRove armband) and training a quadratic support vector machine (QSVM) model, which is responsible for predicting the exertion depending on the patterns identified. The highest accuracy of the QSVM model was 95.7%, which was achieved by filtering the data, removing outliers and offsets, and performing zero calibration; in addition, EMG signals were normalized. It was determined that, given the job strain index’s purpose, physical exertion detection is crucial to computing its intensity in future work.
CITATION STYLE
Concha-Pérez, E., Gonzalez-Hernandez, H. G., & Reyes-Avendaño, J. A. (2023). Physical Exertion Recognition Using Surface Electromyography and Inertial Measurements for Occupational Ergonomics. Sensors, 23(22). https://doi.org/10.3390/s23229100
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