A bio-inspired model for robust navigation assistive devices

Q2 Health Professions Smart Health Pub Date : 2024-04-17 DOI:10.1016/j.smhl.2024.100484
Simon L. Gay , Edwige Pissaloux , Jean-Paul Jamont
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Abstract

This paper proposes a new implementation and evaluation in a real-world environment of a bio-inspired predictive navigation model for mobility control, suitable especially for assistance of visually impaired people and autonomous mobile systems. This bio-inspired model relies on the interactions between formal models of three types of neurons identified in the mammals’ brain implied in navigation tasks, namely place cells, grid cells, and head direction cells, to construct a topological model of the environment under the form of a decentralized navigation graph. Previously tested in virtual environments, this model demonstrated a high tolerance to motion drift, making possible to map large environments without the need to correct it to handle such drifts, and robustness to environment changes. The presented implementation is based on a stereoscopic camera, and is evaluated on its possibilities to map and guide a person or an autonomous mobile robot in an unknown real environment. The evaluation results confirm the effectiveness of the proposed bio-inspired navigation model to build a path map, localize and guide a person through this path. The model predictions remain robust to environment changes, and allow to estimate traveled distances with an error rate below 3% over test paths, up to 100m. The tests performed on a robotic platform also demonstrated the pertinence of navigation data produced by this navigation model to guide an autonomous system. These results open the way toward efficient wearable assistive devices for visually impaired people independent navigation.

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生物启发的鲁棒导航辅助设备模型
本文提出了一种用于移动控制的生物启发预测导航模型的新实施方法,并在真实世界环境中对该模型进行了评估,该模型尤其适用于帮助视障人士和自主移动系统。该生物启发模型依赖于哺乳动物大脑中三种神经元(即位置细胞、网格细胞和头部方向细胞)在导航任务中的形式模型之间的相互作用,以分散导航图的形式构建环境拓扑模型。之前在虚拟环境中进行的测试表明,该模型对运动漂移具有很高的耐受性,因此可以绘制大型环境地图,而无需对其进行修正以处理这种漂移,并且对环境变化具有很强的鲁棒性。所介绍的实施方案以立体摄像机为基础,并对其在未知真实环境中绘制和引导人员或自主移动机器人的可能性进行了评估。评估结果证实了所提出的生物启发导航模型在构建路径图、定位和引导人通过该路径方面的有效性。该模型的预测结果对环境变化保持稳健,并能估算出行进距离,在长达 100 米的测试路径上,误差率低于 3%。在机器人平台上进行的测试还证明了该导航模型生成的导航数据对引导自主系统的相关性。这些结果为视力受损者独立导航的高效可穿戴辅助设备开辟了道路。
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来源期刊
Smart Health
Smart Health Computer Science-Computer Science Applications
CiteScore
6.50
自引率
0.00%
发文量
81
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