Distributed Sensing and Processing for Multi-Camera Networks

  • Sankaranarayanan A
  • Chellappa R
  • Baraniuk R
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Abstract

Sensor networks with large numbers of cameras are becoming increasingly prevalent in a wide range of applications , including video conferencing, motion capture, surveillance, and clinical diagnostics. In this chapter, we identify some of the fundamental challenges in designing such systems. We focus on three aspects: robust statistical inference, computationally efficiency, and opportunistic and parsimonious sensing. We show that the geometric constraints induced by the imaging process are extremely useful for identifying and designing optimal estimators for object detection and tracking tasks. We also derive pipelined and parallelized implementations of popular tools used for statistical inference in non-linear systems, of which multi-camera systems are examples. Finally, we highlight the use of the emerging theory of compressive sensing in reducing the amount of data sensed and communicated by a camera network.

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Sankaranarayanan, A. C., Chellappa, R., & Baraniuk, R. G. (2011). Distributed Sensing and Processing for Multi-Camera Networks. In Distributed Video Sensor Networks (pp. 85–101). Springer London. https://doi.org/10.1007/978-0-85729-127-1_6

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