Hierarchical Path-planning from Speech Instructions with Spatial Concept-based Topometric Semantic Mapping
Akira Taniguchi, Shuya Ito, Tadahiro Taniguchi

TL;DR
This paper introduces SpCoTMHP, a hierarchical path planning method using speech instructions and semantic mapping, improving navigation success rates and computation speed in robot environments.
Contribution
It presents a novel probabilistic model and inference method for hierarchical path planning with speech instructions, integrating spatial concepts and connectivity.
Findings
Improved success rate by 0.590 over baseline methods.
Reduced computation time by 7.14 seconds.
Validated in both simulated and real robot environments.
Abstract
Assisting individuals in their daily activities through autonomous mobile robots, especially for users without specialized knowledge, is crucial. Specifically, the capability of robots to navigate to destinations based on human speech instructions is essential. While robots can take different paths to the same goal, the shortest path is not always the best. A preferred approach is to accommodate waypoint specifications flexibly, planning an improved alternative path, even with detours. Additionally, robots require real-time inference capabilities. This study aimed to realize a hierarchical spatial representation using a topometric semantic map and path planning with speech instructions, including waypoints. This paper presents Spatial Concept-based Topometric Semantic Mapping for Hierarchical Path Planning (SpCoTMHP), integrating place connectivity. This approach offers a novel…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Robotic Path Planning Algorithms · Advanced Image and Video Retrieval Techniques
