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Learning-based multiresolution transforms with application to image compression

机译:基于学习的多分辨率转换及其在图像压缩中的应用

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摘要

In Harten's framework, multiresolution transforms are defined by predicting finer resolution levels of information from coarser ones using an operator, called prediction operator, and defining details (or wavelet coefficients) that are the difference between the exact and predicted values. In this paper we use tools of statistical learning in order to design a more accurate prediction operator in this framework based on a training sample, resulting in multiresolution decompositions with enhanced sparsity. In the case of images, we incorporate edge detection techniques in the design of the prediction operator in order to avoid Gibbs phenomenon. Numerical tests are presented showing that the learning-based multiresolution transform compares favorably with the standard multiresolution transforms in terms of compression capability.
机译:在Harten的框架中,通过使用称为预测算子的运算符从较粗的信息中预测信息的较高分辨率级别,并定义作为精确值与预测值之差的细节(或小波系数),来定义多分辨率转换。在本文中,我们使用统计学习的工具,以基于训练样本在此框架中设计更准确的预测算子,从而导致具有稀疏性的多分辨率分解。对于图像,为了避免吉布斯现象,我们在预测算子的设计中加入了边缘检测技术。数值测试表明,基于学习的多分辨率变换在压缩能力方面优于标准多分辨率变换。

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