Self-quantized wavelet subtrees: a wavelet-based theory for fractal image compression

G. Davis
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引用次数: 44

Abstract

We describe an adaptive wavelet-based compression scheme for images. We decompose an image into a set of quantized wavelet coefficients and quantized wavelet subtrees. The vector codebook used for quantizing the subtrees is drawn from the image. Subtrees are quantized to contracted isometries of coarser scale subtrees. This codebook drawn from the contracted image is effective for quantizing locally smooth regions and locally straight edges. We prove that this self-quantization enables us to recover the fine scale wavelet coefficients of an image given its coarse scale coefficients. We show that this self-quantization algorithm is equivalent to a fractal image compression scheme when the wavelet basis is the Haar basis. The wavelet framework places fractal compression schemes in the context of existing wavelet subtree coding schemes. We obtain a simple convergence proof which strengthens existing fractal compression results considerably, derive an improved means of estimating the error incurred in decoding fractal compressed images, and describe a new reconstruction algorithm which requires O(N) operations for an N pixel image.
自量化小波子树:基于小波的分形图像压缩理论
我们描述了一种基于小波的自适应图像压缩方案。将图像分解为一组量化的小波系数和量化的小波子树。用于量化子树的矢量码本是从图像中绘制的。子树被量化为更粗尺度子树的收缩等距。从压缩图像中提取的码本对于量化局部光滑区域和局部直边是有效的。我们证明了这种自量化可以使我们在给定图像的粗尺度系数的情况下恢复其细尺度小波系数。结果表明,当小波基为哈尔基时,该自量化算法等价于分形图像压缩方案。小波框架将分形压缩方案置于现有小波子树编码方案的背景下。我们得到了一个简单的收敛证明,大大增强了现有的分形压缩结果,推导了一种改进的分形压缩图像解码误差估计方法,并描述了一种新的重构算法,该算法对N像素的图像只需要O(N)次运算。
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