Abstract

Collective perception allows sparsely distributed agents to form a global view on a common spatially distributed problem without any direct access to global knowledge and only based on a combination of locally perceived information. However, the evidence gathered from the environment is often subject to spatial correlations and depends on the movements of the agents. The latter is not always easy to control and the main question is how to share and to combine the estimated information to achieve the most precise global estimate in the least possible time. The current article aims at answering this question with the help of evidence theory, also known as Dempster–Shafer theory, applied to the collective perception scenario as a collective decision-making problem. We study eight most common belief combination operators to address the arising conflict between different sources of evidence in a highly dynamic multi-agent setting, driven by modulation of positive feedback. In comparison with existing approaches, such as voter models, the presented framework operates on quantitative belief assignments of the agents based on the observation time of the options according to the agents’ opinions. The evaluated results on an extended benchmark set for multiple options (n>2) indicate that the proportional conflict redistribution (PCR) principle allows a collective of small size (N=20), occupying 3.5% of the surface, to successfully resolve the conflict between clustered areas of features and reach a consensus with almost 100% certainty up to n=5.

Highlights

  • In a collective perception scenario, a group of individuals has to identify a predominant feature scattered in an unknown environment

  • The findings of the current study have shown that PCR5/6 fusion operator is the most effective in achieving consensus with swarms of small size ( N = 20 ) on the variety of considered benchmarks, i.e. from the low conflicting scenarios to the high conflicting ones, without any specific adaptations

  • Returning to the hypothesis posed at the beginning of this paper, it is possible to state that redistribution of the beliefs to the unions of options allows a collective system to successfully resolve the conflict between the clustered areas of features albeit to the detriment of the convergence time

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Summary

Introduction

In a collective perception scenario, a group of individuals has to identify a predominant feature scattered in an unknown environment It is considered as a special case of consensus achievement task in distributed collective decision-making. In such situations, having multiple agents is known to be more beneficial than having just a single one Acting together, they can cover larger areas and collect more information distributed in a spatial space than operating solo. They can cover larger areas and collect more information distributed in a spatial space than operating solo In this regard, the important questions are how the collected information should be (i) shared among the agents and (ii) combined in order to get the most precise global estimate in the least possible time. Both aspects are inseparably related to information pooling, which is one of the driving processes in distributed decision-making alongside with exploration (Campo et al 2011)

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