This study tackles on a new problem of estimating human-error potential on a shop floor on the basis of wearable sensors. Unlike existing studies that utilize biometric sensing technology to estimate people's internal state such as fatigue and mental stress, we attempt to estimate the human-error potential in a situation where a target person does not stay calm, which is much more difficult as sensor noise significantly increases. We propose a novel formulation, in which the human-error-potential estimation problem is reduced to a classification problem, and introduce a new method that can be used for solving the classification problem even with noisy sensing data. The key ideas are to model the process of calculating biometric indices probabilistically so that the prior knowledge on the biometric indices can be integrated, and to utilize the features that represent the movement of target persons in combination with biometric features. The experimental analysis showed that our method effectively estimates the human-error potential.
翻译:这项研究探讨在可磨损感应器的基础上在商店楼层估计人-危险潜能的新问题。与现有的利用生物鉴别技术估计人-危险潜能值的现有研究不同,我们试图在目标人不保持平静的情况下估计人-危险潜能值,因为传感器噪音明显增加,这要困难得多。我们提出一种新的配方,将人-危险潜能估计问题降低到分类问题,并引入一种新的方法,甚至可以用噪音感测数据来解决分类问题。关键的想法是模拟生物鉴别指数的计算过程,以便可以将先前关于生物鉴别指数的知识综合起来,并利用与生物鉴别特征相结合的显示目标人移动特征的特征。实验分析表明,我们的方法有效地估计了人-危险潜能值。