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On linear transform design with non-linear approximation

机译:非线性近似的线性变换设计

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In this paper we share our recent observations on methods for sparsity enforced orthogonal transform design. In our previous work on this problem, our target was to design transforms (sparse orthonormal transforms -SOT) that minimize the overall sparsity-distortion cost of a collection of image patches mainly for improving the performance of compression methods. In this paper we go one step further to understand why these transforms achieve better approximation and how different they are from transforms like the DCT or the Karhunen-Loeve transform (KLT). Our study lead us to mathematically validate that for a Gaussian process the KLT is the optimal transform not only in a linear approximation sense but also in a nonlinear approximation sense, the latter forming the basis for sparsity-based regularization. This means that the search for SOTs yields the KLT in Gaussian processes, but results in transforms that are distinctly different from the KLT in non-Gaussian cases by capturing useful structures within the data. Both toy examples and real compression results in various representation domains are presented in this paper to support our observations.
机译:在本文中,我们分享了我们最近关于稀疏强制正交变换设计方法的观察。在我们之前的解决问题的工作中,我们的目标是设计变换(稀疏正交变换-sot),最大限度地减少图像斑块集合的整体稀疏性失真成本,主要用于提高压缩方法的性能。在本文中,我们进一步走了一步,了解为什么这些变换达到更好的近似以及它们与DCT或Karhunen-Loeve变换(KLT)的变换有多种。我们的研究导致我们在数学上验证,对于高斯过程,KLT不仅是线性近似感,而且在非线性近似意义上,后者形成基于稀疏性正则化的基础。这意味着SOTS的搜索产生了高斯过程中的KLT,但是通过捕获数据内的有用结构,导致与非高斯案例中的KLT不同的变换。本文提出了两个玩具示例和实际压缩,以支持各种表示域,以支持我们的观察。

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