Multimodal Interaction History and its use in Error Detection and Recovery

Felix Schüssel, F. Honold, Miriam Schmidt, N. Bubalo, A. Huckauf, M. Weber
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引用次数: 21

Abstract

Multimodal systems still tend to ignore the individual input behavior of users, and at the same time, suffer from erroneous sensor inputs. Although many researchers have described user behavior in specific settings and tasks, little to nothing is known about the applicability of such information, when it comes to increase the robustness of a system for multimodal inputs. We conducted a gamified experimental study to investigate individual user behavior and error types found in an actually running system. It is shown, that previous ways of describing input behavior by a simple classification scheme (like simultaneous and sequential) are not suited to build up an individual interaction history. Instead, we propose to use temporal distributions of different metrics derived from multimodal event timings. We identify the major errors that can occur in multimodal interactions and finally show how such an interaction history can practically be applied for error detection and recovery. Applying the proposed approach to the experimental data, the initial error rate is reduced from 4.9% to a minimum of 1.2%.
多模态交互历史及其在错误检测和恢复中的应用
多模态系统仍然容易忽略用户的个人输入行为,同时也容易受到传感器输入错误的影响。尽管许多研究人员已经描述了特定环境和任务中的用户行为,但当涉及到增加多模态输入系统的鲁棒性时,这些信息的适用性知之甚少。我们进行了一项游戏化实验研究,以调查在实际运行的系统中发现的个人用户行为和错误类型。结果表明,以前通过简单分类方案(如同步和顺序)描述输入行为的方法不适合建立个人交互历史。相反,我们建议使用来自多模态事件时间的不同度量的时间分布。我们确定了在多模态交互中可能发生的主要错误,并最终展示了如何将这种交互历史实际应用于错误检测和恢复。将该方法应用于实验数据,将初始错误率从4.9%降低到最低1.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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