使用标牌的轮椅自主室内导航

Ananthakrishnan D. S., Jishnu Prakash K., R. R., Ansamma John
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引用次数: 0

摘要

几项研究表明,残疾人从获得独立行动的手段中受益匪浅。虽然手动或动力轮椅可以满足许多残疾人的需求,但残疾人社区的一部分人发现很难或无法独立使用轮椅。提出了一种基于标识牌识别的轮椅自主室内导航系统。该系统使用深度学习模型从周围环境中检测招牌,并使用Azure文本分析API从招牌图像中提取文本。该系统运行在树莓派微型计算机上,可以安装在任何电动轮椅上。实验和比较结果证明了该系统的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autonomous Indoor Navigation for Wheelchairs using Signboards
Several studies have shown that people with disabilities benefit substantially from access to a means of independent mobility. While the requirements of many individuals with disabilities can be satisfied with manual or powered wheelchairs, a segment of the disabled community finds it difficult or impossible to use wheelchairs independently. This paper presents an autonomous indoor navigation system for wheelchairs based on sign board recognition. The system uses a deep learning model to detect signboards from surroundings and Azure Text Analytics API is used to extract the text from the signboard images. The system runs on a Raspberry Pi minicomputer and can be installed on any powered wheelchair. Experimental results and comparisons prove the efficiency of the proposed system.
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