Abstract

The 𝒩𝒫-hard minimum set cover problem (SCP) is a very typical model to use when attempting to formalise optimal camera placement (OCP) applications. In a generic form, the OCP problem relates to the positioning of individual cameras such that the overall network is able to cover a given area while meeting a set of application-specific requirements (image quality, redundancy, ...) and optimising an objective, typically minimum cost or maximum coverage. In this paper, we focus on an application called global or persistent surveillance: camera networks which ensure full coverage of a given area. As preliminary work, an instance generation pipeline is proposed to create OCP instances from real-world data and solve them using existing literature. The computational cost of both the instance generation process and the solving algorithms however highlights a need for more efficient methods for decision makers to use in real-world settings. In this paper, we therefore propose to review the suitability of the approach, and more specifically to question two key elements: the impact of sampling frequencies and the importance of rigid full-coverage constraints. The results allow us to quickly provide decision makers with an overview of available solutions and trade-offs.

Highlights

  • Optimal camera placement (OCP) is one of the core elements to consider when designing camera-based surveillance infrastructure

  • We focus on one application of the OCP: global area surveillance

  • We built on top of a review of both OCP and set cover problem (SCP) literature and designed a pipeline for real-world instance generation

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Summary

Introduction

Optimal camera placement (OCP) is one of the core elements to consider when designing camera-based surveillance infrastructure. From crowd movement analysis to threat management, these systems are ubiquitous. It has become paramount that these be efficient, and that they incur as low a cost as possible. The OCP can be generically formulated as follows. Usually related to coverage or image quality, and an objective to optimise (typically, the cost), how can one determine the set of positions and orientations which best meets the requirements?

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