The Unequal Error Protection Applied In The Bit Stream With Optimization In The Bit Rate Using Whale Algorithm (WA)

The compression of image using analyzing techniques give us q high quality in the reconstructed image however in the case of transmission produce a sensitive (to the channel noise) image. In this paper we are going to use combination between error detection, source and channel coding with unequal distribution in the code rate our approach shows a high efficiency and optimization in the use of the code rate using Whale Algorithm (WA) (minimization in the redundant bits) compared to other approaches.

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