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Error detection and correction / Convolutional code / Computing / Viterbi algorithm / Forward error correction / Information / Trellis / Discrete mathematics / Hidden Markov model / BCJR algorithm / Serial concatenated convolutional codes
Error detection and correction
Convolutional code
Computing
Viterbi algorithm
Forward error correction
Information
Trellis
Discrete mathematics
Hidden Markov model
BCJR algorithm
Serial concatenated convolutional codes

ERROR CONTROL TECHNIQUES FOR WIRELESS COMMUNICATION SYSTEM

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