{"title":"\"Universal\" transform image coding based on joint adaptation of filter banks, tree structures and quantizers","authors":"V. Pavlovic, K. Ramchandran, P. Moulin","doi":"10.1109/DCC.1997.582130","DOIUrl":null,"url":null,"abstract":"Summary form only given. Transform coding has become the de facto standard for image and video compression. The design of adaptive signal transforms for image coding usually follows one of the two approaches: adaptive tree/quantizer design with fixed subband filter banks and adaptive subband filter bank design with fixed quantizers and tree topology. The main objective of our work is to integrate these two paradigms in an image coder in which subband filter banks, tree structures and quantizers are all adapted. We design a codebook for the filters, tree and quantizers. The codebook design algorithm uses a training set made of images that are assumed to be representative of the broad class of images of interest. We first design the filters and then the quantizers. In the filter design phase, we visit nodes in a top-down fashion and design a filter codebook for each tree node. The optimal filter codebook for each node is designed so as to minimize the theoretical coding gain-based rate. The design of the quantizers and the weights for the splitting decisions is done jointly using a greedy iterative algorithm based on the single tree algorithm of Ramchandran et al. (1993). The actual coding algorithm finds, based on the codebook design, the optimized filter banks, tree structure, and quantizer choices for each node of the tree. In our experimental setup we used a training set of 20 images representative of four image classes.","PeriodicalId":403990,"journal":{"name":"Proceedings DCC '97. Data Compression Conference","volume":"96 10","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"1997-03-25","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Proceedings DCC '97. Data Compression Conference","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1109/DCC.1997.582130","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Summary form only given. Transform coding has become the de facto standard for image and video compression. The design of adaptive signal transforms for image coding usually follows one of the two approaches: adaptive tree/quantizer design with fixed subband filter banks and adaptive subband filter bank design with fixed quantizers and tree topology. The main objective of our work is to integrate these two paradigms in an image coder in which subband filter banks, tree structures and quantizers are all adapted. We design a codebook for the filters, tree and quantizers. The codebook design algorithm uses a training set made of images that are assumed to be representative of the broad class of images of interest. We first design the filters and then the quantizers. In the filter design phase, we visit nodes in a top-down fashion and design a filter codebook for each tree node. The optimal filter codebook for each node is designed so as to minimize the theoretical coding gain-based rate. The design of the quantizers and the weights for the splitting decisions is done jointly using a greedy iterative algorithm based on the single tree algorithm of Ramchandran et al. (1993). The actual coding algorithm finds, based on the codebook design, the optimized filter banks, tree structure, and quantizer choices for each node of the tree. In our experimental setup we used a training set of 20 images representative of four image classes.
只提供摘要形式。变换编码已经成为图像和视频压缩的事实上的标准。用于图像编码的自适应信号变换的设计通常遵循两种方法中的一种:具有固定子带滤波器组的自适应树/量化器设计和具有固定量化器和树拓扑的自适应子带滤波器组设计。我们工作的主要目标是将这两种范式集成到图像编码器中,其中子带滤波器组,树结构和量化器都适用。我们为滤波器、树和量化器设计了一个码本。码本设计算法使用一个由图像组成的训练集,这些图像被认为是感兴趣的大类图像的代表。我们首先设计滤波器,然后是量化器。在过滤器设计阶段,我们以自顶向下的方式访问节点,并为每个树节点设计一个过滤器代码本。设计了每个节点的最优滤波器码本,使理论编码增益率最小。在Ramchandran et al.(1993)的单树算法的基础上,采用贪心迭代算法联合设计分拆决策的量化器和权值。实际的编码算法根据码本设计,为树的每个节点找到优化的滤波器组、树结构和量化器选择。在我们的实验设置中,我们使用了一个由代表四个图像类别的20个图像组成的训练集。