Huan Wang, Yunhui Shi, Jin Wang, Gang Wu, N. Ling, Baocai Yin
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引用次数: 0
摘要
基于球面测度的球面图像表示(SMSIR)通过有效的索引方案在球面域内实现了像素的均匀分布。基于SMSIR的球面小波变换可以有效地设计,以紧凑的方式捕获球面几何特征,为球面图像压缩提供了有力的工具。本文提出了一种基于球面小波变换的SMSIR图像压缩方案,即S-SPIHT (Spherical Set Partitioning In Hierarchical Trees),该方案利用了SMSIR图像球面小波分解中各子带之间的内在相似性。所提出的S-SPIHT算法可以将球形小波系数逐步转化为比特流,并生成可在多个球形图像质量水平下有效解码的嵌入压缩比特流。我们提出的S-SPIHT最关键的部分是重新设计扫描不同指数方案对应的小波系数。我们设计了有序根树索引扫描(ORTIS)、并进索引逐级扫描(DIPS)和并进索引交叉扫描(DICS)三种扫描方法来有效地重组小波系数。这些方法可以有效地利用子带之间的自相似性和高频子带系数不显著的特点。在广泛使用的数据集上的实验结果表明,我们提出的S-SPIHT在PSNR, S-PSNR和SSIM方面优于SMSIR图像的直接SPIHT。
Spherical Image Compression Using Spherical Wavelet Transform
The Spherical Measure Based Spherical Image Representation (SMSIR) has nearly uniformly distributed pixels in the spherical domain with effective index schemes. Based on SMSIR, the spherical wavelet transform can be efficiently designed, which can capture the spherical geometry feature in a compact manner and provides a powerful tool for spherical image compression. In this paper, we propose an efficient compression scheme for SMSIR images named Spherical Set Partitioning in Hierarchical Trees (S-SPIHT) using the spherical wavelet transform, which exploits the inherent similarities across the subbands in the spherical wavelet decomposition of a SMSIR image. The proposed S-SPIHT can progressively transform spherical wavelet coefficients into bit-stream, and generate an embedded compressed bit-stream that can be efficiently decoded at several spherical image quality levels. The most crucial part of our proposed S-SPIHT is the redesign of scanning the wavelet coefficients corresponding to different index schemes. We design three scanning methods, namely ordered root tree index scanning (ORTIS), dyadic index progressive scanning(DIPS) and dyadic index cross scanning(DICS)to efficiently reorganize the wavelet coefficients. These methods can effectively exploit the self-similarity between sub-bands and the fact that the high-frequency sub-bands mostly contain insignificant coefficients. Experimental results on widely-used datasets demonstrate that our proposed S-SPIHT outperforms the straightforward SPIHT for SMSIR images in terms of PSNR, S-PSNR and SSIM.