Humanoid AI Robot: A Member of Our Next-generation Family

Year : 2024 | Volume :11 | Issue : 01 | Page : 20-24
By

Narasimha Chary Ch

CH.GVN Prasad

  1. Associate Professor Department of Computer Science and Engineering, Sri Indu College of Engineering & Technology, Sheriguda Telangana India
  2. Professor Department of Computer Science and Engineering, Sri Indu College of Engineering & Technology, Sheriguda Telangana India

Abstract

Humanoid robots represent a swiftly advancing area of study and innovation, seeking to produce robots with traits and abilities resembling those of humans. These robots have diverse uses, such as aiding humans in different activities or exploring dangerous or inaccessible areas. Advancing humanoid robots entails combining cutting-edge technologies, including robotics, natural language processing, computer vision, and artificial intelligence. Combining computer science and engineering, robotics is an interdisciplinary subject of study. A subfield of robotics research known as “humanoid robotics” studies robots with human features that can imitate human behavior and intelligence. This study compares various humanoid robot versions that are already on the market and discusses recent developments in the field of humanoid robotics research. The problems and potential applications of artificial intelligence to complicated problem solving in humanoid robots are also briefly covered in this paper.

Keywords: Humanoid, robots, automated machinery, jumping pad, autism spectrum, dynamic moment primitives, gait, artificial intelligence, research, reinforcement learning

[This article belongs to Journal of Advancements in Robotics(joarb)]

How to cite this article: Narasimha Chary Ch, CH.GVN Prasad. Humanoid AI Robot: A Member of Our Next-generation Family. Journal of Advancements in Robotics. 2024; 11(01):20-24.
How to cite this URL: Narasimha Chary Ch, CH.GVN Prasad. Humanoid AI Robot: A Member of Our Next-generation Family. Journal of Advancements in Robotics. 2024; 11(01):20-24. Available from: https://journals.stmjournals.com/joarb/article=2024/view=143920


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Regular Issue Subscription Review Article
Volume 11
Issue 01
Received April 8, 2024
Accepted April 11, 2024
Published April 22, 2024