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Decoding in weighted combinatorial and other metrics

Subject Area Electronic Semiconductors, Components and Circuits, Integrated Systems, Sensor Technology, Theoretical Electrical Engineering
Term from 2012 to 2015
Project identifier Deutsche Forschungsgemeinschaft (DFG) - Project number 216040227
 
There exist low-complexity hard-input bounded distance decoders for many block codes. However, low complexity soft-input decoding remains still a challenging task. Our goal is to propose a soft-input decoding of block codes for channels with memory. For memoryless channels such soft-input decoding, called Generalized Minimum Distance (GMD) decoding, was suggested by Forney in 1966. GMD decoding uses reliabilities of received symbols and can be considered as a bounded distance decoding in a weighted (by the reliabilities) Hamming metric. The Hamming metric matches discrete memoryless symmetric channels, i.e., maximum-likelihood decoding in such channels is equivalent to minimum distance decoding in the Hamming metric. GMD decoding uses a hardinput error-and-erasure decoder of the block code in a multitrial manner, where in each decoding trial, a number of least reliable received symbols are erased before decoding. Hundreds of publications show that GMD decoding is a universal procedure (applicable to an arbitrary code) with very good performance and low complexity. As a result, it has many practical applications for different memoryless channels and for the decoding (generalized) concatenated codes.
DFG Programme Research Grants
 
 

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