Enhancing Object Mapping in SLAM using CNN

IF 0.3
Rakesh Singh, Radhika Kotecha, Karan Shethia
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引用次数: 0

Abstract

Automation is becoming more prevalent among manufacturing and eCommerce companies as a way  to better serve their customers. One of the key problems in warehouse management is controlling the internal delivery/movement of goods/objects. It is labor-intensive, time-consuming, and needs additional care based on delicacy goods. Automated guided vehicles (AGVs) that are small in size can serve as a solution to the aforementioned problem of locomotion. For any robot to move autonomously, the initial and critical requirement is to understand the surrounding environment precisely. Simultaneous Localisation and Mapping (SLAM) is the preferred method to build an environment map at runtime. SLAM is designed to work in a static environment and faces a few challenges once it involves dynamic objects. This research proposes Deep Learning to enhance the SLAM technique. It aids the identification of static and dynamic objects and consequently updates the occupancy grid map. The proposed approach has been validated through a simulated environment and a Convolution Neural Network (CNN) for the classification of static and dynamic objects. The simulation results demonstrate the promising nature of the proposed approach.
利用CNN增强SLAM中的对象映射
作为更好地服务客户的一种方式,自动化在制造业和电子商务公司中变得越来越普遍。仓库管理的关键问题之一是控制货物/对象的内部交付/移动。它是劳动密集型的,耗时的,并且需要基于美味的额外照顾。小型自动导引车(agv)可以作为解决上述运动问题的一种方法。任何机器人要实现自主运动,最基本也是最关键的要求是准确地了解周围环境。同时定位和映射(SLAM)是在运行时构建环境映射的首选方法。SLAM的设计初衷是在静态环境中工作,一旦涉及到动态对象,就会面临一些挑战。本研究提出深度学习来强化SLAM技术。它有助于识别静态和动态对象,从而更新占用网格图。该方法已通过仿真环境和卷积神经网络(CNN)对静态和动态目标进行分类验证。仿真结果表明了该方法的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Next-Generation Computing
International Journal of Next-Generation Computing COMPUTER SCIENCE, THEORY & METHODS-
自引率
66.70%
发文量
60
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