使用语音人机交互工具的新手用户体验

Matus Pleva, J. Juhár, S. Ondáš, Christopher R. Hudson, Cindy L. Bethel, Daniel W. Carruth
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引用次数: 6

摘要

语音识别软件是一种广泛应用于各种任务领域的工具。然而,一些具有高安全性要求的关键任务系统不允许外部连接到提供语音识别功能的远程系统。这给现代语音识别带来了一个问题,它主要是基于云的。为了解决这个问题,我们利用Julius作为一个离线的基于电话的语音识别器,以便将语音识别软件集成到执法人员的机器人系统中。为解决操不同方言的警务人员在使用基于音素的语音识别器时遇到的困难,我们开发了一套培训工具。本文研究了在几个支持语音的人机交互(HRI)实验过程中,从训练工具的最新实施中吸取的经验教训。这些用户中的大多数都是新手,对语音识别软件几乎没有经验。互动在斯洛伐克Košice的三个活动中完成:(1)2018年博物馆之夜,(2)私人公司演示,以及(3)Košice技术大学夏季儿童大学(TUKE for Kids)演示。用户交互评估的结果强调,通过培训,新手用户可以通过操作模拟机器人系统,在短时间内学会与离线语音识别系统交互。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novice User Experiences with a Voice-Enabled Human-Robot Interaction Tool
Voice recognition software is a widely adopted tool in a variety of task domains. However, several mission critical systems, which have high security demands cannot allow outside connections to the remote systems that provide voice recognition capabilities. This presents a problem for modern day voice recognition, which is largely cloud based. To address this issue, we leveraged Julius as an offline phoneme-based voice recognizer in order to incorporate voice recognition software into robotic systems for law enforcement officers. In order to address the difficulties that officers with a variety of dialects have when interacting with a phoneme-based voice recognizer, a training tool was developed. This paper examines the lessons learned from the latest implementation of the training tool over the course of several voice-enabled Human-Robot Interaction (HRI) experiments. The majority of these users were novices who had little to no experience with voice recognition software. Interactions were completed at three events in Košice, Slovakia: (1) Museum Night 2018, (2) a private company demonstration, and (3) Technical University of Košice’s Summer Kids University (TUKE for kids) demonstration. The results of the user interaction evaluations highlighted that, through training, novice users could learn to interact with an offline voice recognition system after a short period of time by operating a simulated robotic system.
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