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Neural Approximations of Analog Joint Source-Channel Coding

Academic Article
Publication Date:
2015
abstract:
An estimation setting is considered, where a number of sensors transmit their observations of a physical phenomenon, described by one or more random variables, to a sink over noisy communication channels. The goal is to minimize a quadratic distortion measure (Minimum Mean Square Error - MMSE) under a global power constraint on the sensors' transmissions. Linear MMSE encoders and decoders, parametrically optimized in encoders' gains, Shannon-Kotel'nikov mappings, and nonlinear parametric functional approximators (neural networks) are investigated and numerically compared, highlighting subtle differences in sensitivity and achievable performance.
Iris type:
01.01 Articolo in rivista
Keywords:
Joint source-channel coding; neural networks; Shannon-Kotel'nikov mapping
List of contributors:
Mongelli, Maurizio
Authors of the University:
MONGELLI MAURIZIO
Handle:
https://iris.cnr.it/handle/20.500.14243/229419
Published in:
IEEE SIGNAL PROCESSING LETTERS
Journal
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