一个支持自然语言的虚拟助手,用于工业环境中的人机交互

Chen Li, D. Chrysostomou, Hongji Yang
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引用次数: 0

摘要

本文介绍了一种基于自然语言的虚拟助理(VA),称为Max,用于增强工业机器人的人机交互(HRI)。尽管已经有大量的自然语言接口可用于商业用途和社交机器人,但大多数人工智能仍然紧密地绑定在特定的机器人系统上。此外,它们缺乏自然有效的人机通信协议来提高用户体验和在工业地板上使用所需的鲁棒性。因此,提出的框架是基于三个关键要素设计的。客户机-服务器风格的体系结构,为管理和控制部署在车间的各种类型的机器人提供集中解决方案。受人-人对话策略,即词汇-语义策略和一般转向策略启发的通信协议,被用来指导Max的反应生成。这些对话策略嵌入到Max的架构中,以提高操作员在执行工业任务期间的参与度。最后,最先进的预训练模型,来自变形金刚的双向编码器表示(BERT),经过微调,以支持对来自操作员和机器人服务的请求意图的高度准确预测。为了验证Max在真实工业环境中的性能,进行了多次实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Natural Language-enabled Virtual Assistant for Human-Robot Interaction in Industrial Environments
This paper introduces a natural language-enabled virtual assistant (VA), called Max, developed to enhance human-robot interaction (HRI) with industrial robots. Regardless of the numerous natural language interfaces already available for commercial use and social robots, most VAs remain tightly bound to a specific robotic system. Besides, they lack a natural and efficient human-robot communication protocol to advance the user experience and the required robustness for use on the industrial floor. Therefore, the proposed framework is designed based on three key elements. A Client-Server style architecture that provides a centralised solution for managing and controlling various types of robots deployed on the shop floor. A communication protocol inspired by human-human conversation strategies, i.e., lexical-semantic strategy and general diversion strategy, is used to guide Max's response generation. These conversation strategies are embedded in Max's architecture to improve the engagement of the operators during the execution of industrial tasks. Finally, the state-of-the-art pre-trained model, Bidirectional Encoder Representations from Transformers (BERT), is fine-tuned to support a highly accurate prediction of requested intents from the operator and robot services. Multiple experiments were conducted for validating Max's performance in a real industrial environment.
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