采用简单传感器数据的无重力神经系统,用于智能机器人辅助医疗轮椅自主系统路径规划的有效实时圆角、路口和门口检测

M. Gillham, Ben McElroy, G. Howells, Stephen Kelly, S. Spurgeon, M. Pepper
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引用次数: 15

摘要

人类辅助设备需要在现实世界的情况下有效地提供实时帮助:电动轮椅使用者需要可靠的有力支持,特别是在避碰方面。然而,重要的是,智能系统不会剥夺用户的控制权。必须允许患者在系统中提供智能,辅助技术必须设计得足够智能,以识别和适应这一点。因此,在医疗保健领域使用的机器人辅助必须强调积极的支持,而不是采取侵入性的角色。无重力神经网络是一种优秀的实时模式识别工具。本文介绍了一种超前识别开放门道和路口的技术。使用一种应用于无重力神经网络架构的技术,实时使用简单的传感器数据来检测具有固有数据不确定性的打开的门。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weightless Neural System Employing Simple Sensor Data for Efficient Real-Time Round-Corner, Junction and Doorway Detection for Autonomous System Path Planning in Smart Robotic Assisted Healthcare Wheelchairs
Human assistive devices need to be effective with real-time assistance in real world situations: powered wheelchair users require reassuring robust support, especially in the area of collision avoidance. However, it is important that the intelligent system does not take away control from the user. The patient must be allowed to provide the intelligence in the system and the assistive technology must be engineered to be sufficiently smart to recognize and accommodate this. Robotic assistance employed in the healthcare arena must therefore emphasize positive support rather than adopting an intrusive role. Weightless Neural Networks are an excellent pattern recognition tool for real-time applications. This paper introduces a technique for look-ahead identification of open doorways and junctions. Simple sensor data in real-time is used to detect open doors with inherent data uncertainties using a technique applied to a Weightless Neural Network Architecture.
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