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predictive data modeling for improving prediction efficiency by better fitting to a one-sided probability distribution are being discussed. Among them, our own mechanism Conditional Move To Front (CMTF), which can be useful for encoding images with high variation of input data, was described. Additionally, an original two-stage mechanism for efficient prediction error encoding (used in three codecs of different computational complexities: Multi-ctx 2, 7-ctx MMAE, and Blend-28), which uses adaptive Golomb code at the initial stage and passes its binary output to context-adaptive binary arithmetic coders (CABAC), is described in detail. We also introduced separate coders for prediction error bit signs and prediction coefficients (often forming large block in header data). In particular, we focused on the important role of correct contextual division, when sections with different characteristics of their nearest neighbourhood are grouped into separate classes to compress the data within each of them as efficiently as possible. From experimental studies, we conclude that the minimum mean absolute error (MMAE) method is superior to the minimum mean square error (MMSE) method in determining linear prediction models, especially for images with low noise level. Connecting mechanisms known from the literature with our ideas in the Blend-28 codec enabled us to increase compression efficiency in comparison to the modern and popular WebP codec by achieving an approximately 11% shorter bit average.
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