Optimization design of filter banks in subband image coding

Yi Shang, Longzhuang Li
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引用次数: 2

Abstract

In this paper we present a new optimization-based method for designing filter banks in subband image coding. We formulate the design problem as a nonlinear optimization problem whose objective consists of both the performance metrics of the image coder; such as the peak signal to noise ratio (PSNR), and those of individual filters. In contrast to previous methods that design filter banks separately from the other operations in image coding, our formulation allows us to search for the filters in the context of an image coder to maximize coding quality. Due to the nonlinear nature of the performance metrics, the optimization problem is solved by using simulating annealing. In our method, we first apply the optimization method to find good filter banks for individual training image and then select the one that performs best across all training images to be the final solution. In experimental results, toe show that the filter bank designed by our method improves the coding quality of the best existing filter bank in terms of PSNR on nine benchmark images.
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子带图像编码中滤波器组的优化设计
本文提出了一种新的基于优化的子带图像编码滤波器组设计方法。我们将设计问题表述为一个非线性优化问题,其目标包括图像编码器的性能指标;例如峰值信噪比(PSNR),以及单个滤波器的信噪比。与之前设计滤波器组与图像编码中的其他操作分开的方法相反,我们的公式允许我们在图像编码器的上下文中搜索滤波器,以最大限度地提高编码质量。由于性能指标的非线性性质,采用模拟退火方法求解优化问题。在我们的方法中,我们首先应用优化方法为单个训练图像找到良好的滤波器组,然后选择在所有训练图像中表现最好的一个作为最终解决方案。实验结果表明,本文方法设计的滤波器组在9张基准图像的PSNR方面提高了现有最佳滤波器组的编码质量。
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