Sensor Fusion with Asynchronous Decentralized Processing for 3D Target Tracking with a Wireless Camera Network

Author:

Di Gennaro Thiago Marchi1ORCID,Waldmann Jacques2ORCID

Affiliation:

1. Systems and Control Department, Weapons Systems Directorate, Brazilian Navy, Rio de Janeiro 20010-100, RJ, Brazil

2. Systems and Control Department, Eletronics Engineering Division, Instituto Tecnológico de Aeronáutica, São José dos Campos 12228-900, SP, Brazil

Abstract

We present a method to acquire 3D position measurements for decentralized target tracking with an asynchronous camera network. Cameras with known poses have fields of view with overlapping projections on the ground and 3D volumes above a reference ground plane. The purpose is to track targets in 3D space without constraining motion to a reference ground plane. Cameras exchange line-of-sight vectors and respective time tags asynchronously. From stereoscopy, we obtain the fused 3D measurement at the local frame capture instant. We use local decentralized Kalman information filtering and particle filtering for target state estimation to test our approach with only local estimation. Monte Carlo simulation includes communication losses due to frame processing delays. We measure performance with the average root mean square error of 3D position estimates projected on the image planes of the cameras. We then compare only local estimation to exchanging additional asynchronous communications using the Batch Asynchronous Filter and the Sequential Asynchronous Particle Filter for further fusion of information pairs’ estimates and fused 3D position measurements, respectively. Similar performance occurs in spite of the additional communication load relative to our local estimation approach, which exchanges just line-of-sight vectors.

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference43 articles.

1. Target Tracking Applied to Extraction of Multiple Evolving Threats from a Stream of Surveillance Data;Sutton;IEEE Transac. Comput. Soc. Syst.,2021

2. Tracking and Activity Recognition Through Consensus in Distributed Camera Networks;Song;IEEE Transac. Imag. Proc.,2010

3. Olfati-Saber, R. (2007, January 12–14). Distributed Kalman filtering for sensor networks. Proceedings of the 2007 46th IEEE Conference on Decision and Control, New Orleans, LA, USA.

4. Solomon, C., and Breckon, T. (2013). Fundamentos de Processamento de Imagens uma Abordagem práTica com Exemplos em Matlab, LTC. (In Portuguese).

5. Chagas, R., and Waldmann, J. (October, January 29). Difusão de medidas para estimação distribuída em uma rede de sensores. Proceedings of the XI Symposium on Electronic Warfare, São José dos Campos, Brazil. (In Portuguese).

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