Real-Time 3D Map Building in a Mobile Robot System with Low-Bandwidth Communication

Author:

Junaedy Alfin1ORCID,Masuta Hiroyuki1ORCID,Sawai Kei1,Motoyoshi Tatsuo1,Takagi Noboru1

Affiliation:

1. Department of Intelligent Robotics, Toyama Prefectural University, 5180 Kurokawa Imizu, Toyama 939-0398, Japan

Abstract

This paper presents a new 3D map building technique using a combination of 2D SLAM and 3D objects that can be implemented on relatively low-cost hardware in real-time. Recently, 3D visualization of the real world became increasingly important. In robotics, it is not only required for intelligent control, but also necessary for operators to provide intuitive visualization. SLAM is generally applied for this purpose, as it is considered a basic ability for truly autonomous robots. However, due to the increase in the amount of data, real-time processing is becoming a challenge. Therefore, in order to address this problem, we combine 2D data and 3D objects to create a new 3D map. The combination is simple yet robust based on rotation, translation, and clustering techniques. The proposed method was applied to a mobile robot system for indoor observation. The results show that real-time performance can be achieved by the system. Furthermore, we also combine high and low-bandwidth networks to deal with network problems that usually occur in wireless communication. Thus, robust wireless communication can be established, as it ensures that the missions can be continued even if the system loses the main network.

Publisher

MDPI AG

Subject

Artificial Intelligence,Control and Optimization,Mechanical Engineering

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