RONov 7, 2018

Online Exploration of an Unknown Region of Interest with a Team of Aerial Robots

arXiv:1811.02769v4
Originality Incremental advance
AI Analysis

This addresses the challenge of efficient aerial exploration for applications like environmental monitoring, though it is incremental by extending ground robot methods to aerial contexts with new constraints.

The paper tackles the problem of exploring an unknown region of interest (ROI) with a team of aerial robots, where the ROI's size and shape are unknown and robots can fly over boundaries, proposing a recursive depth-first search algorithm that achieves a constant competitive ratio, with specific formulas like 2(S_r+S_p)(R+⌊log R⌋)/((S_r-S_p)(1+⌊log R⌋)) for grid-based ROIs and empirical validation through simulations and experiments.

In this paper, we study the problem of exploring an unknown Region Of Interest (ROI) with a team of aerial robots. The size and shape of the ROI are unknown to the robots. The objective is to find a tour for each robot such that each point in the ROI must be visible from the field-of-view of some robot along its tour. In conventional exploration using ground robots, the ROI boundary is typically also as an obstacle and robots are naturally constrained to the interior of this ROI. Instead, we study the case where aerial robots are not restricted to flying inside the ROI (and can fly over the boundary of the ROI). We propose a recursive depth-first search-based algorithm that yields a constant competitive ratio for the exploration problem. Our analysis also extends to the case where the ROI is translating, \eg, in the case of marine plumes. In the simpler version of the problem where the ROI is modeled as a 2D grid, the competitive ratio is $\frac{2(S_r+S_p)(R+\lfloor\log{R}\rfloor)}{(S_r-S_p)(1+\lfloor\log{R}\rfloor)}$ where $R$ is the number of robots, and $S_r$ and $S_p$ are the robot speed and the ROI speed, respectively. We also consider a more realistic scenario where the ROI shape is not restricted to grid cells but an arbitrary shape. We show our algorithm has $\frac{2(S_r+S_p)(18R+\lfloor\log{R}\rfloor)}{(S_r-S_p)(1+\lfloor\log{R}\rfloor)}$ competitive ratio under some conditions. We empirically verify our algorithm using simulations as well as a proof-of-concept experiment mapping a 2D ROI using an aerial robot with a downwards-facing camera.

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