Neural network-based codebook search for image compression

M. Bodruzzaman, R. Gupta, M. R. Karim, S. Bodruzzaman
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Abstract

This paper presents an efficient and fast encoding of still images using the feedforward neural network technique for codebook search. The image to be coded is first clustered into a small subset of neighboring images and then the neural network-based encoder is used to find the best matching code sequences in the codebook. This subset is then used as a candidate set and an exhaustive search is then performed within this subset to find an optimal code sequence which minimizes the perceptual error between coded and decoded images. In this work, a generic codebook is developed using non-causal differential pulse coded modulation (DPCM) with residual mean removal and vector quantization using Linde, Buzo and Gray (1980) method. The codebook is analyzed to identify a pattern in the codebook. This pattern is used to train a neural network to obtain the approximate index of the pattern in the codebook. Then, an extensive search is done around this approximate position identified by the neural network to obtain the nearest neighbor of the pattern. Since the candidate set is usually much smaller that the whole code book, there is a substantial saving in codebook search time for coding an image as compared to the traditional method using full codebook search by the LBG algorithm.
基于神经网络的码本搜索图像压缩
本文提出了一种利用前馈神经网络进行码本搜索的静态图像高效快速编码方法。首先将待编码的图像聚类到相邻图像的一个小子集中,然后使用基于神经网络的编码器在码本中找到最佳匹配的编码序列。然后将该子集用作候选集,然后在该子集内执行穷举搜索,以找到将编码和解码图像之间的感知误差最小化的最佳编码序列。在这项工作中,使用非因果差分脉冲编码调制(DPCM)开发了一个通用码本,使用Linde, Buzo和Gray(1980)方法去除残差平均值和矢量量化。对密码本进行分析以识别密码本中的模式。该模式用于训练神经网络,以获得该模式在码本中的近似索引。然后,围绕这个由神经网络识别的近似位置进行广泛的搜索,以获得模式的最近邻居。由于候选集通常比整个码本小得多,因此与使用LBG算法进行全码本搜索的传统方法相比,编码图像的码本搜索时间大大节省。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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