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Finding a Landing Site on an Urban Area: A Multi-Resolution Probabilistic Approach

2022-04-26 21:02:00
Barak Pinkovich, Boaz Matalon, Ehud Rivlin, Hector Rotstein

Abstract

This paper considers the problem of finding a landing spot for a drone in a dense urban environment. The conflicting requirement of fast exploration and high resolution is solved using a multi-resolution approach, by which visual information is collected by the drone at decreasing altitudes so that spatial resolution of the acquired images increases monotonically. A probability distribution is used to capture the uncertainty of the decision process for each terrain patch. The distributions are updated as information from different altitudes is collected. When the confidence level for one of the patches becomes larger than a pre-specified threshold, suitability for landing is declared. One of the main building blocks of the approach is a semantic segmentation algorithm that attaches probabilities to each pixel of a single view. The decision algorithm combines these probabilities with a priori data and previous measurements to obtain the best estimates. Feasibility is illustrated by presenting a number of examples generated by a realistic closed-loop simulator.

Abstract (translated)

URL

https://arxiv.org/abs/2204.12592

PDF

https://arxiv.org/pdf/2204.12592.pdf


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