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Physical Exertion Recognition Using Surface Electromyography and Inertial Measurements for Occupational Ergonomics

Elsa Concha-Pérez, Hugo G. González-Hernández, Jorge A. Reyes-Avendaño

2023Sensors11 citationsDOIOpen Access PDF

Abstract

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.

Topics & Concepts

Wearable computerComputer scienceExertionInertial measurement unitSupport vector machineArtificial intelligenceWork (physics)Noise (video)Task (project management)OutlierMachine learningSimulationEngineeringPhysical therapyMedicineImage (mathematics)Systems engineeringEmbedded systemMechanical engineeringOccupational Health and Safety in WorkplacesErgonomics and Musculoskeletal DisordersMuscle activation and electromyography studies
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