Zhou Guoyang, Lu Ming-Lun, Yu Denny
School of Industrial Engineering, Purdue University, West Lafayette, IN 47906 USA.
National Institute of Occupational Safety and Health, Cincinnati, OH 45226 USA.
IEEE Sens J. 2023 Jun;23(16):18798-18809. doi: 10.1109/jsen.2023.3289670.
Overexertion in lifting tasks is one of the leading causes of occupational injuries. The load weight is the key information required to evaluate the risk of a lifting task. However, weight varies across different objects and is unknown in many circumstances. Existing methods of estimating the load weight without manual weighing focused on analyzing body kinematics or muscle activations, which either utilize indirect indicators or require intrusive sensors. This study proposed using tactile gloves as a new modality to predict the load weight. Hand pressure data measured by tactile gloves during each lift were formulated as a 2-D matrix containing spatial and temporal information. Different types of deep neural networks were adopted, and a ResNet 18 regression model achieved the best performance. Specifically, it achieved a predicted -squared of 0.821 and a mean absolute error of 1.579 kg. In addition, to understand the model's decision-making logic and the hand force exertion pattern during lifting, the Shapley additive explanations (SHAPs) technique was utilized to determine the importance of each sensor at each frame. The results demonstrated that the right hand was more important than the left hand for the model to predict the load weight. Additionally, fingers were more important than palms, and the middle phase of a lifting task was more important than its beginning and ending phases. Overall, this study demonstrated the feasibility of using tactile gloves to predict the load weight and provided new scientific insights on hand force exertion patterns during lifting.
在搬运任务中过度用力是职业伤害的主要原因之一。负载重量是评估搬运任务风险所需的关键信息。然而,不同物体的重量各不相同,而且在许多情况下是未知的。现有的无需人工称重即可估算负载重量的方法主要集中在分析身体运动学或肌肉激活情况,这些方法要么使用间接指标,要么需要侵入式传感器。本研究提出使用触觉手套作为一种预测负载重量的新方式。在每次搬运过程中,触觉手套测量的手部压力数据被整理成一个包含空间和时间信息的二维矩阵。采用了不同类型的深度神经网络,其中ResNet 18回归模型表现最佳。具体而言,其预测决定系数达到0.821,平均绝对误差为1.579千克。此外,为了了解模型的决策逻辑以及搬运过程中的手部用力模式,利用Shapley值法(SHAPs)来确定每一帧中每个传感器的重要性。结果表明,对于模型预测负载重量而言,右手比左手更重要。此外,手指比手掌更重要,搬运任务的中间阶段比开始和结束阶段更重要。总体而言,本研究证明了使用触觉手套预测负载重量的可行性,并为搬运过程中的手部用力模式提供了新的科学见解。