Natural Human Robot Interaction Using Artificial Intelligence: A Survey

Rishikesh Bamdale, Shreejeet Sahay, V. Khandekar
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引用次数: 2

Abstract

In the era of Artificial Intelligence and robotics, it’s imperative to have a friendly system to communicate with robots so they can play a very crucial role in every-day human life. Human Robot Interaction is the foremost system in robotics today to verbally communicate with a robot in a natural way. The major struggle of the interactive system not only lies in how to teach robots to speak but also in helping to make them understand the meanings and real-world around us. This article reviews the current novel and inventive technologies to have a perfect and robust interactive system, also the importance of natural communication along with the evolution of robots since an early age. The process of language understanding has its large significance in human-robot communication with the rising technology of Artificial Intelligence. Reinforcement Learning also will play a bigger role in understanding the natural language for robots. This paper is concluded by discussing various pitfalls, advantages and future scopes of different technical aspects of Human Robot Interaction, with the hope to have the absolute interactive robots in near future, that humans have always dreamed of.
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利用人工智能的自然人机交互:综述
在人工智能和机器人时代,有一个友好的系统来与机器人交流是势在必行的,这样它们就可以在人类的日常生活中发挥非常重要的作用。人机交互是当今机器人技术中最重要的以自然方式与机器人进行口头交流的系统。互动系统的主要难点不仅在于如何教机器人说话,还在于帮助它们理解我们周围的意义和现实世界。本文回顾了当前的新颖和创造性的技术,以拥有一个完美的和强大的交互系统,以及自然通信的重要性,随着机器人从小的发展。随着人工智能技术的兴起,语言理解过程在人机交流中具有重要意义。强化学习也将在理解机器人的自然语言方面发挥更大的作用。本文通过讨论人机交互不同技术方面的各种缺陷,优势和未来范围来结束,希望在不久的将来拥有人类一直梦寐以求的绝对交互机器人。
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