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Spectrum Decomposition for Image/Signal Coding

机译:图像/信号编码的频谱分解

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摘要

In conventional subband/wavelet image coding, the subband decomposition is performed on the spatial-domain image. Here, we introduce a novel decomposition where the subband decomposition is performed on the global DCT spectrum of the image. That is, the two-dimensional spectrum rather than the image is represented by a sum of basis functions, each weighted by the transform coefficients. The distinct features of this decomposition are analyzed from a transform perspective. This spectral subband decomposition is then used as the basis for a new image coder, building on the condensed wavelet packet (CWP) algorithm. Ironically, this new method is shown to have lower arithmetic complexity than conventional subband/wavelet coders that directly decompose a time or spatial domain signal. Comparisons of the new method against conventional subband/wavelet coders that use the popular 9/7 dyadic decomposition, condensed wavelet packets, and generalized lapped orthogonal transforms, show that the new method has lower complexity and higher compression performance.
机译:在常规的子带/小波图像编码中,子带分解是在空间域图像上执行的。在这里,我们介绍一种新颖的分解方法,其中对图像的全局DCT频谱执行子带分解。即,二维频谱而不是图像由基本函数之和表示,每个基本函数均由变换系数加权。从转换的角度分析了这种分解的独特特征。然后,基于压缩小波包(CWP)算法,将此频谱子带分解用作新图像编码器的基础。具有讽刺意味的是,这种新方法显示出比直接分解时域或空间域信号的常规子带/小波编码器低的算术复杂度。将该新方法与使用流行的9/7二分分解,压缩小波包和广义重叠正交变换的常规子带/小波编码器进行比较,结果表明该新方法具有较低的复杂度和较高的压缩性能。

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