形态学分量分解与压缩感知相结合的图像压缩方法

Xuan Zhu, Li Liu, Peng Jin, Na Ai
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引用次数: 7

摘要

针对一幅图像中卡通和纹理具有不同形态特征的特点,提出了一种新的图像压缩方法。结合稀疏表示漫画的字典RDWT和稀疏表示纹理的字典WAT,所提出的模型可以有效地获得漫画和纹理。然后,结合Contourlet变换和压缩感知(CS)对压缩后的图像进行重构,结合单层离散小波变换(SL-DWT)和压缩感知(CS)对压缩后的图像纹理进行重构。将压缩后的图像与纹理叠加得到重构图像。实验结果表明,该方法在低采样率下具有良好的保留大尺度结构和主要细节的性能,保证了卡通的补全和纹理的清晰。此外,它具有更高的压缩率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Morphological component decomposition combined with compressed sensing for image compression
Basing on the fact that the cartoon and texture in one image have different morphological characteristics, we propose a new method to compress image. Combining RDWT, the dictionary sparsely representing the cartoon, and WAT, the dictionary sparsely representing the texture, the presented model can effectively obtain the cartoon and texture. Then, we reconstruct the compressed cartoon by the combination of Contourlet Transform and Compressed Sensing (CS) and reconstruct the compressed texture by the combination of single layer discrete wavelet transform (SL-DWT) and Compressed Sensing (CS). The reconstructed image will be obtained by superposing the compressed cartoon and texture. As the experimental results show, the new method has good performances for preserving large scale structure and mainly details under the low sampling rate, and ensuring the cartoon completion and texture clear. Moreover, it has higher compression rates.
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