MULTIPARENT FRACTAL IMAGE CODING-BASED METHODS FOR SALT-AND-PEPPER NOISE REMOVAL

Fractals Pub Date : 2024-01-27 DOI:10.1142/s0218348x24500129
WEIJIE LIANG, XIAOYI LI, ZHIHUI TU, JIAN LU
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Abstract

Salt-and-pepper noise consists of outlier pixel values which significantly impair image structure and quality. Multiparent fractal image coding (MFIC) methods substantially exploit image redundancy by utilizing multiple domain blocks to approximate the range block, partially compensating for the information loss caused by noise. Motivated by this, we propose two novel image restoration methods based on MFIC to remove salt-and-pepper noise. The first method integrates Huber M-estimation into MFIC, resulting in an improved anti-salt-and-pepper noise robust fractal coding approach. The second method incorporates MFIC into a total variation (TV) regularization model, including a data fidelity term, an MFIC term and a TV regularization term. An alternative iterative method based on proximity operator is developed to effectively solve the proposed model. Experimental results demonstrate that these two proposed approaches achieve significantly enhanced performance compared to traditional fractal coding methods.

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基于多子分形图像编码的椒盐噪声消除方法
椒盐噪声由离群像素值组成,严重影响图像结构和质量。多父分形图像编码(MFIC)方法通过利用多个域块来逼近范围块,从而充分利用了图像冗余,部分弥补了噪声造成的信息损失。受此启发,我们提出了两种基于 MFIC 的新型图像复原方法,以消除椒盐噪声。第一种方法将 Huber M-estimation 集成到 MFIC 中,从而产生了一种改进的抗椒盐噪声鲁棒分形编码方法。第二种方法将 MFIC 纳入总变异(TV)正则化模型,包括数据保真项、MFIC 项和 TV 正则化项。为了有效求解所提出的模型,还开发了一种基于邻近算子的替代迭代法。实验结果表明,与传统的分形编码方法相比,这两种建议的方法能显著提高性能。
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