Vision-Aided Online A* Path Planning for Efficient and Safe Navigation of Service Robots
Praveen Kumar, Tushar Sandhan

TL;DR
This paper introduces a real-time, vision-aided path planning framework for service robots that integrates semantic perception with A* planning, enabling context-aware navigation using affordable hardware.
Contribution
It presents a novel integration of lightweight semantic segmentation with online A* planning for real-time, context-aware navigation on low-cost robotic platforms.
Findings
Robust real-time navigation in complex environments.
Effective semantic perception improves safety and task relevance.
Validated in simulation and real-world experiments.
Abstract
The deployment of autonomous service robots in human-centric environments is hindered by a critical gap in perception and planning. Traditional navigation systems rely on expensive LiDARs that, while geometrically precise, are semantically unaware, they cannot distinguish a important document on an office floor from a harmless piece of litter, treating both as physically traversable. While advanced semantic segmentation exists, no prior work has successfully integrated this visual intelligence into a real-time path planner that is efficient enough for low-cost, embedded hardware. This paper presents a framework to bridge this gap, delivering context-aware navigation on an affordable robotic platform. Our approach centers on a novel, tight integration of a lightweight perception module with an online A* planner. The perception system employs a semantic segmentation model to identify…
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Taxonomy
TopicsRobotic Path Planning Algorithms · Robotics and Sensor-Based Localization · Multimodal Machine Learning Applications
