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ICA based algorithms for computing optimal 1-D linear block transforms in variable high-rate source coding

机译:基于ICA的算法,用于在可变高速率源编码中计算最佳一维线性块变换

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摘要

The Karhunen-Loeve Transform (KLT) is optimal for transform coding of Gaussian sources, however, it is not optimal, in general, for non-Gaussian sources. Furthermore, under the high-resolution quantization hypothesis, nearly everything is known about the performance of a transform coding system with entropy constrained scalar quantization and mean-square distortion. It is then straightforward to find a criterion that, when minimized, gives the optimal linear transform under the abovementioned conditions. However, the optimal transform computation is generally considered as a difficult task and the Gaussian assumption is then used in order to simplify the calculus. In this paper, we present the abovementioned criterion as a contrast of independent component analysis modified by an additional term which is a penalty to non-orthogonality. Then we adapt the icainf algorithm by Pham in order to compute the transform minimizing the criterion either with no constraint or with the orthogonality constraint. Finally, experimental results show that the transforms we introduced can (1) outperform the KLT on synthetic signals, (2) achieve slightly better PSNR for high-rates and better visual quality (preservation of lines and contours) for medium-to-low rates than the KLT and 2-D DCT on grayscale natural images.
机译:Karhunen-Loeve变换(KLT)对于高斯源的变换编码是最佳的,但是,对于非高斯源,通常它不是最佳的。此外,在高分辨率量化假设下,关于具有熵约束标量量化和均方失真的变换编码系统的性能,几乎所有人都知道。然后很容易找到一个准则,当该准则最小化时,可以在上述条件下给出最佳线性变换。但是,通常将最佳变换计算视为一项艰巨的任务,然后使用高斯假设以简化演算。在本文中,我们将上述标准作为独立成分分析的对比,而该独立成分分析由附加项修改,这是对非正交性的一种惩罚。然后,我们通过Pham调整icainf算法,以计算不带约束或具有正交性约束的最小化准则的变换。最后,实验结果表明,我们引入的变换可以(1)在合成信号上胜过KLT;(2)对于高速率,PSNR稍好一些,对于中低速率,视频质量更好(保留线条和轮廓)比灰度自然图像上的KLT和2-D DCT好。

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