ROMay 25

OPAL: Omnidirectional Path-efficient Aerial 3D expLoration

arXiv:2605.2542327.0
Predicted impact top 68% in RO · last 90 daysOriginality Incremental advance
AI Analysis

For autonomous drone exploration, OPAL offers a lightweight alternative to complex planners, reducing travel distance at the cost of increased exploration time.

OPAL introduces a computationally simpler exploration framework for drones that uses deliberate 360-degree yaw rotation at ambiguous branch points instead of global tour planning, achieving up to 25% lower travel distance than FALCON in real-world tests while maintaining high coverage.

Autonomous exploration is critical for robot mapping unknown environments. Desirable characteristics of exploration algorithms include compute efficiency and small traversed distance during the exploration process. Motivated by these, we present Omnidirectional Path-efficient Aerial 3D expLoration (OPAL), an exploration framework centered on deliberate 360-degree yaw rotation at ambiguous branch points rather than compute-heavy global tour planning. We devise multiple variants of OPAL to determine the frontier-selection strategy once the yaw pan is completed. One variant is model-free, while others use large language models (LLMs) or vision-language models (VLMs). We characterize the performance of these variants while varying the vicinity search radius to include frontiers in the selection process. Through simulations we find that although the time-consuming in-place yaw rotation increases total exploration time relative to more computationally complex baselines such as EDEN and FALCON, OPAL is computationally simpler and achieves shorter travel distances and higher coverage-versus-distance area under the curve. We also show that adjusting the frontier-selection search radius enables a tradeoff between travel distance and total exploration time. We verify our results on a Modal AI drone in two indoor environments by comparing OPAL against FALCON, and find that the traveled distance for a variant of OPAL to be as much as 25% lower than FALCON.

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