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首页|The Marco Polo Problem: A Combinatorial Approach to Geometric Localization

The Marco Polo Problem: A Combinatorial Approach to Geometric Localization

The Marco Polo Problem: A Combinatorial Approach to Geometric Localization

来源:Arxiv_logoArxiv
英文摘要

We introduce and study the Marco Polo problem, which is a combinatorial approach to geometric localization. In this problem, we are told there are one or more points of interest (POIs) within distance $n$ of the origin that we wish to localize. Given a mobile search point, $\Delta$, that is initially at the origin, a localization algorithm is a strategy to move $\Delta$ to be within a distance of $1$ of a POI. In the combinatorial localization problem we study, the only tool we can use is reminiscent of the children's game, "Marco Polo," in that $\Delta$ can issue a probe signal out a specified distance, $d$, and the search algorithm learns whether or not there is a POI within distance $d$ of $\Delta$. For example, we could imagine that POIs are one or more hikers lost in a forest and we need to design a search-and-rescue (SAR) strategy to find them using radio signal probes to a response device that hikers carry. Unlike other known localization algorithms, probe responses do not inform our search algorithm of the direction or distance to a POI. The optimization problem is to minimize the number of probes and/or POI responses, as well as possibly minimizing the distance traveled by $\Delta$. We describe a number of efficient combinatorial Marco Polo localization strategies and we analyze each one in terms of the size, $n$, of the search domain. Moreover, we derive strong bounds for the constant factors for the search costs for our algorithms, which in some cases involve computer-assisted proofs. We also show how to extend these strategies to find all POIs using a simple, memoryless search algorithm, traveling a distance that is $\mathcal{O}(\log{k})$-competitive with the optimal traveling salesperson (TSP) tour for $k$ POIs.

Ofek Gila、Michael T. Goodrich、Zahra Hadizadeh、Daniel S. Hirschberg、Shayan Taherijam

University of California, IrvineUniversity of California, IrvineUniversity of RochesterUniversity of California, IrvineUniversity of California, Irvine

计算技术、计算机技术

Ofek Gila,Michael T. Goodrich,Zahra Hadizadeh,Daniel S. Hirschberg,Shayan Taherijam.The Marco Polo Problem: A Combinatorial Approach to Geometric Localization[EB/OL].(2025-04-24)[2025-06-05].https://arxiv.org/abs/2504.17955.点此复制

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