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Automatic identification and counting of repetitive actions related to an industrial worker

机译:自动识别和计数与产业工人有关的重复动作

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This study aims at proposing an innovative experimental methodology for the automatic recognition and counting of occupational repetitive action during a work cycle of an industrial worker. Through this aim, we want to evaluate the possibility to objectivize the computation of the OCcupational Repetitive Action (OCRA) index. Two healthy subjects were enrolled in the study and they were asked to perform 11 technical actions in two different repetitions. Participants were equipped with 23 inertial sensors place on different body segments in order to evaluate angles related to trunk, shoulder, elbow and wrist in the three anatomical planes. An algorithm based on Support Vector Machines was used for the automatic recognition of the technical actions; a further algorithm was implemented for the counting of the actions after their recognition. The recognition algorithm was tested with both a subject-specific training and a standard training. Results showed an accuracy in the recognition greater than 89.5% and 86.5% for the subject-specific and standard training, respectively. As regards the action counting, algorithm showed an accuracy from 72.2% to 100% based on different actions. This preliminary study opens the possibility to validate an automatic methodology for the automatic detection and counting of repetitive actions in industrial environment based on machine-learning algorithm and inertial sensors.
机译:这项研究旨在提出一种创新的实验方法,用于在工业工人的工作周期中自动识别和计数职业重复行动。通过这个目标,我们想评估客观化职业重复行动(OCRA)指数计算的可能性。两名健康受试者参加了研究,并要求他们在两次不同的重复中执行11项技术动作。参与者配备了23个惯性传感器,分别放置在不同的身体部位上,以评估与三个解剖平面中的躯干,肩膀,肘部和腕部有关的角度。基于支持向量机的算法用于技术动作的自动识别。实施了另一种算法,用于在识别动作后对动作进行计数。识别算法已通过主题特定训练和标准训练进行了测试。结果表明,针对特定主题和标准训练的识别准确率分别高于89.5%和86.5%。关于动作计数,算法根据不同的动作显示出72.2%到100%的精度。这项初步研究为验证基于机器学习算法和惯性传感器的工业环境中重复动作的自动检测和计数的自动方法提供了可能性。

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