Syndrome-based error resilient scheme of distributed joint source-channel coding

In this paper,we consider the problem of distributed joint source and channel coding(DJSCC),which combines distributed source coding and channel coding into one single encoder. Unlike other parity-based DJSCC schemes,we here employ syndrome-based method which has been considered as optimal in compression but loss of error resilience,to achieve the same goal as parity-based method. The proposed syndrome-based scheme shows its efficiency of error resilient capability in the simulation results.

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