使用directionlet的空间-频率量化

V. Velisavljevic, B. Beferull-Lozano, M. Vetterli
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引用次数: 8

摘要

在我们之前的工作中,我们提出了一种构造严格采样的完美重构变换,该变换沿不同方向在相应的基函数中施加方向消失矩(dvm),称为方向let。在这里,我们将方向小波与空间频率量化(SFQ)图像压缩方法相结合,该方法最初基于标准二维(2-D)小波变换(WT)。我们表明,就压缩图像的质量而言,我们的新压缩方法优于标准的SFQ以及最先进的压缩方法,如SPIHT和JPEG-2000,特别是在低速率压缩状态下。我们还表明,与标准SFQ算法的复杂度相比,计算复杂度的顺序保持不变。
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Space-Frequency Quantization using Directionlets
In our previous work we proposed a construction of critically sampled perfect reconstruction transforms with directional vanishing moments (DVMs) imposed in the corresponding basis functions along different directions, called directionlets. Here, we combine the directionlets with the space-frequency quantization (SFQ) image compression method, originally based on the standard two-dimensional (2-D) wavelet transform (WT). We show that our new compression method outperforms the standard SFQ as well as the state-of-the-art compression methods, like SPIHT and JPEG-2000, in terms of the quality of compressed images, especially in a low-rate compression regime. We also show that the order of computational complexity remains the same, as compared to the complexity of the standard SFQ algorithm.
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