Linear prediction image coding using iterated function systems

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This paper presents a hybrid system to speed up image fractal encoding. The coding scheme, LP–IFS, consists of linear prediction (LP) and Iterated Functions Systems (IFS) applied in cascade on the image. The LP process employs a 2D auto-regressive model to estimate parameters for each block in the image partition; IFS are then used instead of adaptive quantizers to encode linear prediction errors. The stability of the resulting coding scheme is assured, since both LP and IFS are stable systems. The experiments performed have shown that LP–IFS can achieve very low bit-rates (BR) with good subjective and objective quality. Moreover, comparative studies based on extensive computer simulations have demonstrated that LP–IFS can rival standard IFS-based techniques in terms of BR and peak signal-to-noise ratio for high compression ratio and with respect to computing time.

论文关键词:Image coding,Linear prediction,Fractal coding

论文评审过程:Received 17 April 1998, Revised 14 July 1998, Accepted 16 July 1998, Available online 7 June 1999.

论文官网地址:https://doi.org/10.1016/S0262-8856(98)00153-X