在费茨定律任务中通过自适应改变触觉反馈线索提高用户性能

IF 2.4 3区 计算机科学 Q2 COMPUTER SCIENCE, CYBERNETICS IEEE Transactions on Haptics Pub Date : 2024-01-25 DOI:10.1109/TOH.2024.3358188
Drake Rowland;Benjamin Davis;Taylor Higgins;Ann Majewicz Fey
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引用次数: 0

摘要

提高人类用户在某些复杂任务中的表现是许多领域的重要研究课题,从熟练制造到康复和外科手术训练。许多文献中的例子都探讨了触觉辅助或引导完成任务的效果,以及触觉阻碍暂时增加任务难度以达到加快学习的最终目的。研究还表明,根据专业知识自适应地改变指导可能最为有效。然而,据我们所知,还没有一项结论性研究在系统实验中对这些增强模式进行评估。在本研究中,我们通过随机对照试验评估了 24 名人类受试者在不同触觉反馈条件下执行菲特定律伸手任务的学习成果,这些反馈条件包括:无触觉、辅助触觉、阻力触觉以及与当前成绩测量相关的自适应变化触觉。受试者每人共进行了 400 次测试,本文报告了 40 次测试前和 40 次测试后的结果。虽然大多数情况下成绩都有所提高,但我们发现统计意义上的显著结果表明,与其他组相比,我们的自适应触觉反馈条件能带来更快、更有效的学习,这一点可以从运动时间、过冲、成绩指数和速度等指标中得到证明。
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Enhancing User Performance by Adaptively Changing Haptic Feedback Cues in a Fitts's Law Task
Enhancing human user performance in some complex task is an important research question in many domains from skilled manufacturing to rehabilitation and surgical training. Many examples in the literature explore the effects of both haptic assistance or guidance to complete a task, as well as haptic hindrance to temporarily increase task difficulty for the ultimate goal of faster learning. Studies also suggest adaptively changing guidance based on expertise may be most effective. However, to our knowledge, there has not yet been a conclusive study evaluating these enhancement modes in a systematic experiment. In this article, we evaluate learning outcomes for 24 human subjects in a randomized control trial performing a Fitt's law reaching task under various haptic feedback conditions including: no haptics, assistive haptics, resistive haptics, and adaptively changing haptics tied to current performance measures. Subjects each performed 400 trials total and this paper reports results for 40 pre-test and 40 post-test trials. While most conditions did show improvements in performance, we found statistically significant results indicating that our adaptive haptic feedback condition leads to faster and more effective learning as evidenced by metrics of movement time, overshoot, performance index, and speed when compared to the other groups.
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来源期刊
IEEE Transactions on Haptics
IEEE Transactions on Haptics COMPUTER SCIENCE, CYBERNETICS-
CiteScore
5.90
自引率
13.80%
发文量
109
审稿时长
>12 weeks
期刊介绍: IEEE Transactions on Haptics (ToH) is a scholarly archival journal that addresses the science, technology, and applications associated with information acquisition and object manipulation through touch. Haptic interactions relevant to this journal include all aspects of manual exploration and manipulation of objects by humans, machines and interactions between the two, performed in real, virtual, teleoperated or networked environments. Research areas of relevance to this publication include, but are not limited to, the following topics: Human haptic and multi-sensory perception and action, Aspects of motor control that explicitly pertain to human haptics, Haptic interactions via passive or active tools and machines, Devices that sense, enable, or create haptic interactions locally or at a distance, Haptic rendering and its association with graphic and auditory rendering in virtual reality, Algorithms, controls, and dynamics of haptic devices, users, and interactions between the two, Human-machine performance and safety with haptic feedback, Haptics in the context of human-computer interactions, Systems and networks using haptic devices and interactions, including multi-modal feedback, Application of the above, for example in areas such as education, rehabilitation, medicine, computer-aided design, skills training, computer games, driver controls, simulation, and visualization.
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