Laboratory of Automation and 3D Multimodal Intelligent Interaction (LAIMI), Department of Applied Sciences, University of Quebec at Chicoutimi (UQAC), 555 Boulevard de l'Université, Chicoutimi, QC G7H 2B1, Canada.
Laboratory of Automation and 3D Multimodal Intelligent Interaction (LAIMI), Department of Health Sciences, University of Quebec at Chicoutimi (UQAC), 555 Boulevard de l'Université, Chicoutimi, QC G7H 2B1, Canada.
Sensors (Basel). 2017 Sep 1;17(9):2003. doi: 10.3390/s17092003.
Inadequate postures adopted by an operator at work are among the most important risk factors in Work-related Musculoskeletal Disorders (WMSDs). Although several studies have focused on inadequate posture, there is limited information on its identification in a work context. The aim of this study is to automatically differentiate between adequate and inadequate postures using two wearable devices (helmet and instrumented insole) with an inertial measurement unit (IMU) and force sensors. From the force sensors located inside the insole, the center of pressure (COP) is computed since it is considered an important parameter in the analysis of posture. In a first step, a set of 60 features is computed with a direct approach, and later reduced to eight via a hybrid feature selection. A neural network is then employed to classify the current posture of a worker, yielding a recognition rate of 90%. In a second step, an innovative graphic approach is proposed to extract three additional features for the classification. This approach represents the main contribution of this study. Combining both approaches improves the recognition rate to 95%. Our results suggest that neural network could be applied successfully for the classification of adequate and inadequate posture.
工作中操作人员采取的不当姿势是与工作相关的肌肉骨骼疾病(WMSD)的最重要的风险因素之一。尽管已经有几项研究集中在不当姿势上,但在工作环境中识别它的信息有限。本研究的目的是使用带有惯性测量单元(IMU)和力传感器的两个可穿戴设备(头盔和带仪器的鞋垫)自动区分适当和不当姿势。从鞋垫内部的力传感器中,计算出压力中心(COP),因为它被认为是姿势分析中的一个重要参数。在第一步中,使用直接方法计算了一组 60 个特征,然后通过混合特征选择将其减少到 8 个。然后使用神经网络对工人的当前姿势进行分类,识别率达到 90%。在第二步中,提出了一种创新的图形方法来提取三个额外的特征进行分类。这种方法代表了本研究的主要贡献。结合这两种方法可以将识别率提高到 95%。我们的结果表明,神经网络可以成功应用于适当和不当姿势的分类。