Robotic Odor Source Localization via Vision and Olfaction Fusion Navigation Algorithm

Sunzid Hassan, Lingxiao Wang, Khan Raqib Mahmud
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Abstract

Robotic odor source localization (OSL) is a technology that enables mobile robots or autonomous vehicles to find an odor source in unknown environments. An effective navigation algorithm that guides the robot to approach the odor source is the key to successfully locating the odor source. While traditional OSL approaches primarily utilize an olfaction-only strategy, guiding robots to find the odor source by tracing emitted odor plumes, our work introduces a fusion navigation algorithm that combines both vision and olfaction-based techniques. This hybrid approach addresses challenges such as turbulent airflow, which disrupts olfaction sensing, and physical obstacles inside the search area, which may impede vision detection. In this work, we propose a hierarchical control mechanism that dynamically shifts the robot’s search behavior among four strategies: crosswind maneuver, Obstacle-Avoid Navigation, Vision-Based Navigation, and Olfaction-Based Navigation. Our methodology includes a custom-trained deep-learning model for visual target detection and a moth-inspired algorithm for Olfaction-Based Navigation. To assess the effectiveness of our approach, we implemented the proposed algorithm on a mobile robot in a search environment with obstacles. Experimental results demonstrate that our Vision and Olfaction Fusion algorithm significantly outperforms vision-only and olfaction-only methods, reducing average search time by 54% and 30%, respectively.
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通过视觉和嗅觉融合导航算法实现机器人气味源定位
机器人气味源定位(OSL)是一种能让移动机器人或自动驾驶车辆在未知环境中找到气味源的技术。引导机器人接近气味源的有效导航算法是成功定位气味源的关键。传统的 OSL 方法主要采用纯嗅觉策略,通过追踪散发的气味羽流引导机器人找到气味源,而我们的工作则引入了一种融合导航算法,将视觉和嗅觉技术相结合。这种混合方法可以应对各种挑战,例如扰乱嗅觉感应的湍流气流,以及搜索区域内可能阻碍视觉检测的物理障碍物。在这项工作中,我们提出了一种分层控制机制,可在四种策略中动态改变机器人的搜索行为:横风机动、避障导航、基于视觉的导航和基于嗅觉的导航。我们的方法包括用于视觉目标检测的定制训练深度学习模型和用于基于嗅觉导航的飞蛾启发算法。为了评估我们方法的有效性,我们在有障碍物的搜索环境中对移动机器人实施了所提出的算法。实验结果表明,我们的视觉与嗅觉融合算法明显优于纯视觉方法和纯嗅觉方法,平均搜索时间分别缩短了 54% 和 30%。
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