AdapTutAR:增强现实中机器任务的自适应辅导系统

Gaoping Huang, Xun Qian, Tianyi Wang, Fagun Patel, M. Sreeram, Yuanzhi Cao, K. Ramani, Alexander J. Quinn
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引用次数: 26

摘要

现代制造工艺处于不断变化的状态,因为它们适应了对灵活和自配置生产日益增长的需求。这对培训工人快速掌握新的机器操作和流程(即机器任务)提出了挑战。传统的现场培训是有效的,但需要专家为每个接受培训的员工付出时间和精力,而且不可扩展。录制的教程,如基于视频或增强现实(AR),允许更有效的扩展。然而,与面对面的教学不同,现有的录影教程缺乏适应工人多样化经验和学习行为的能力。我们提出了AdapTutAR,这是一个自适应任务辅导系统,使专家能够通过具体化的演示来记录机器任务辅导,并根据每个用户的特点使用不同的AR辅导内容来训练学习者。这种适应是通过持续监测学习者的听课情况,实时、现场调整辅导内容来实现的。用户研究评价结果表明,自适应系统比非自适应系统更有效、更优越。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AdapTutAR: An Adaptive Tutoring System for Machine Tasks in Augmented Reality
Modern manufacturing processes are in a state of flux, as they adapt to increasing demand for flexible and self-configuring production. This poses challenges for training workers to rapidly master new machine operations and processes, i.e. machine tasks. Conventional in-person training is effective but requires time and effort of experts for each worker trained and not scalable. Recorded tutorials, such as video-based or augmented reality (AR), permit more efficient scaling. However, unlike in-person tutoring, existing recorded tutorials lack the ability to adapt to workers’ diverse experiences and learning behaviors. We present AdapTutAR, an adaptive task tutoring system that enables experts to record machine task tutorials via embodied demonstration and train learners with different AR tutoring contents adapting to each user’s characteristics. The adaptation is achieved by continually monitoring learners’ tutorial-following status and adjusting the tutoring content on-the-fly and in-situ. The results of our user study evaluation have demonstrated that our adaptive system is more effective and preferable than the non-adaptive one.
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