A Hard Decision Error Correction Scheme for Corrupted Arithmetic Codes

A robust decoder for the corrupted arithmetic codes is proposed, which provides good error correction capability by reserving space for invalid symbol. The proposed decoder acts as a stand-alone error correction tools and it can be used together with any other existing error correction schemes. Keywords: error, correction, hard

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