基于改进轨迹生成的辅助移动机器人轮椅实时门道检测与对齐确定

M. Gillham, G. Howells, S. Spurgeon, Stephen Kelly, M. Pepper
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引用次数: 11

摘要

电动轮椅使用者可能会发现在诸如建筑物之类的封闭环境中操作困难,一个根本的问题存在:轮椅并不比他们希望通过的门口窄多少。探测和通过门道的能力是目前自动导向轮椅面临的主要挑战。我们利用一种简单的门道模式识别技术在机器人轮椅使用者的实时系统中进行快速处理。我们能够对5个单独的门道进行96%的检测和识别,对22个单独的接近角度和翻译的识别率为86%。我们认为,利用简单的约束红外测距传感器数据集获得的特征进行模式识别,可以用于快速识别门道,以及适合实时轨迹调整的重要粗定位和接近角确定,在该领域取得了显著的进步。
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Real-Time Doorway Detection and Alignment Determination for Improved Trajectory Generation in Assistive Mobile Robotic Wheelchairs
Powered wheelchair users may find operation in enclosed environments such as buildings difficult, a fundamental problem exists: wheelchairs are not much narrower than the doorway they wish to pass through. The ability to detect and pass through doorways represents a major current challenge for automated guided wheelchairs. We utilize a simple doorway pattern recognition technique for fast processing in a real-time system for robotic wheelchair users. We are able to show a 96% detection and identification of 5 individual doorways and an 86% recognition rate of 22 separate approach angles and translations. We conclude that pattern recognition using features obtained from simple constrained infrared ranging sensor data binning can be utilized for fast identification of doorways, and important coarse position and approach angle determination, suitable for real-time trajectory adjustment, representing a significant enhancement in this area.
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