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Merging the transform step and the quantization step for Karhunen-Loeve transform based image compression

机译:合并基于Karhunen-Loeve变换的图像压缩的变换步骤和量化步骤

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Transform coding is one of the most important methods for lossy image compression. The optimum linear transform - known as Karhunen-Loeve transform (KLT) - was difficult to implement in the classic way. Now, due to continuous improvements in neural network's performance, the KLT method becomes more topical then ever. We propose a new scheme where the quantization step is merged together with the transform step during the learning phase. The new method is tested for different levels of quantization and for different types of quantizers. Experimental results presented in the paper prove that the new proposed scheme always gives better results than the state-of-the-art solution.
机译:变换编码是用于有损图像压缩的最重要方法之一。最佳线性变换-称为Karhunen-Loeve变换(KLT)-很难以经典方式实现。现在,由于神经网络性能的不断提高,KLT方法变得比以往更加热门。我们提出了一种新的方案,其中在学习阶段将量化步骤与变换步骤合并在一起。测试了该新方法的不同量化级别和不同类型的量化器。本文提出的实验结果证明,新提出的方案总是比最新的解决方案提供更好的结果。

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