Proceedings Article10.1109/ICIP.2001.958958
Distributed compression for sensor networks
Julius Kusuma,L. Doherty,Kannan Ramchandran +2 more
- 07 Oct 2001
- Vol. 1, pp 82-85
94
TL;DR: A construction for quantizer design given a training set, and a distributed compression scheme to efficiently relay the quantized observations to a central decoder are provided.
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Abstract: We consider the problem of efficiently transmitting sets of spatially correlated observations in a distributed sensor network without requiring inter-node communication to exploit the correlation. Specifically, we provide a construction for quantizer design given a training set, and a distributed compression scheme to efficiently relay the quantized observations to a central decoder.
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