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arxiv: 2606.22838 · v1 · pith:B2PFOO53new · submitted 2026-06-22 · 💻 cs.RO

FPAS: Frontier-Based Path Planning with Adaptive Sampling for Large-Scale Unknown Environments

classification 💻 cs.RO
keywords fpassamplingadaptivecomputationalwhileenvironmentsfrontier-basedgoal-reaching
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In this work, we propose Frontier-based Path Planning with Adaptive Sampling (FPAS), a novel framework designed for efficient goal-reaching in large-scale, unknown environments. While existing planners often struggle with computational bottlenecks or inefficient paths during long-range navigation, FPAS overcomes these challenges by reinterpreting the frontier concept for goal-directed tasks. Specifically, our method leverages frontiers to effectively guide forward progression into unobserved regions and to select promising subgoals for backtracking from dead-ends or inefficient paths. Furthermore, FPAS introduces an adaptive sampling mechanism based on a frontier-derived openness metric. This mechanism dynamically adjusts the global graph's density by employing sparse nodes in open areas to alleviate computational burdens, while preserving denser sampling in narrow passages to ensure connectivity. Extensive evaluations demonstrate that FPAS substantially improves computational efficiency over baseline methods while maintaining highly competitive goal-reaching performance.

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