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Efficient coding of sparse trees using an enhanced-embedded zerotree wavelet algorithm - Springer

机译:使用增强型嵌入式零树小波算法对稀疏树进行有效编码-Springer

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In the Embedded Zerotree Wavelet (EZW) algorithm, a large number of bits are consumed in the encoding of Isolated Zero (IZ) symbols. This is the main bottleneck of the EZW algorithm, which limits its performance in terms of compression gain. To circumvent this limitation of the EZW algorithm, we propose in this paper, the Enhanced-EZW (E-EZW) algorithm based on the novel concept of a sparse tree (ST) encoding scheme. The ST encoding scheme provides an efficient encoding of ‘IZ’ symbols and eventually gives significant improvement in compression gain. Image features are clustered at various locations in an image, which gives rise to spatial correlation between Significant Coefficients (SCs) at these locations. Based on the above observation, we further propose differential coding of relative position of SCs in ST (DCORPS) in the E-EZW (DCORPS E-EZW) algorithm. We analyze cases where the ST coding gives higher coding gain compared to the EZW algorithm. Further, we see that DCORPS in sparse tree coding improves the overall coding efficiency of the E-EZW algorithm. By simulation results, we also demonstrate that the E-EZW and DCORPS E-EZW algorithms outperform two other important wavelet-based compression algorithms: namely set partitioning in hierarchical trees (SPIHT) and JPEG-2000 for a representative set of real-life images.
机译:在嵌入式零树小波(EZW)算法中,在隔离零(IZ)符号的编码中消耗了大量比特。这是EZW算法的主要瓶颈,它在压缩增益方面限制了其性能。为了克服EZW算法的这种局限性,我们在本文中提出了一种基于稀疏树(ST)编码方案的新颖概念的增强型EZW(E-EZW)算法。 ST编码方案提供了对“ IZ”符号的有效编码,并最终显着提高了压缩增益。图像特征聚集在图像中的各个位置,这引起这些位置的有效系数(SC)之间的空间相关性。基于上述观察,我们进一步提出在E-EZW(DCORPS E-EZW)算法中,SC在ST(DCORPS)中的相对位置的差分编码。我们分析了ST编码比EZW算法具有更高编码增益的情况。此外,我们看到稀疏树编码中的DCORPS提高了E-EZW算法的整体编码效率。通过仿真结果,我们还证明了E-EZW和DCORPS E-EZW算法的性能优于其他两个基于小波的重要压缩算法:即用于代表真实图像集的分层树(SPIHT)和JPEG-2000中的集划分。

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