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Image Compression based on Fuzzy Segmentation and Anisotropic Diffusion

机译:基于模糊分割和各向异性扩散的图像压缩

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In this paper we present a hybrid model for image compression based on fuzzy segmentation and Partial Differential Equations. The main motivation behind our approach is to produce immediate access to objects/features of interest in a high quality decoded image which could be useful on smart devices, for analysis purpose, as well as for multimedia content-based description standards. The image is approximated as a set of uniform regions: The technique will assign well-defined members to homogenous regions in order to achieve image segmentation. The fuzzy c-means (FcM) is a guide to cluster image data. A second stage coding is applied using entropy coding to remove the whole image entropy redundancy. In the decoding phase, we suggest the application of a nonlinear anisotropic diffusion to enhance the quality of the coded image.
机译:本文基于模糊分割和局部微分方程呈现了一种用于图像压缩的混合模型。 我们的方法背后的主要动机是立即进入对高质量解码图像中感兴趣的对象/特征,这对于分析目的,以及基于多媒体内容的描述标准。 图像被近似为一组均匀区域:该技术将分配定义的成员以实现图像分割。 模糊C-Means(FCM)是集群图像数据的指南。 使用熵编码施加第二阶段编码以消除整个图像熵冗余。 在解码阶段,我们建议应用非线性各向异性扩散以增强编码图像的质量。

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