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Characterizing Mutual Information Loss in Pyramidal Image Processing Structures

机译:在金字塔图像处理结构中表征互信息损失

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Gaussian and Laplacian pyramids have long been important for image analysis and compression. More recently, Gaussian and Laplacian pyramids have become an important component of machine learning and deep learning for image analysis and image recognition. Constructing these pyramids consists of a series of filtering, decimation, and differencing operations, and the quality indicator is usually mean squared reconstruction error in comparison to the original image. We present a new characterization of the information loss in a Gaussian pyramid in terms of the change in mutual information. More specifically, we show that one half the log ratio of entropy powers between two stages in a Gaussian pyramid is equal to the difference in mutual information between these two stages. We show that this relationship holds for a wide variety of probability distributions and present several examples of analyzing Gaussian and Laplacian pyramids for different images.
机译:高斯和拉普拉斯金字塔长期以来一直非常重要,对图像分析和压缩很重要。最近,高斯和拉普拉斯金字塔已成为图像分析和图像识别的机器学习和深度学习的重要组成部分。构造这些金字塔包括一系列滤波,抽取和差异操作,并且质量指示符通常是与原始图像相比的平均重建误差。我们在相互信息的变化方面提出了高斯金字塔中信息损失的新表征。更具体地,我们示出了高斯金字塔在两个阶段之间的熵权的日志比的一半与这两个阶段之间的相互信息的差异等于差异。我们表明这种关系适用于各种概率分布,并提供分析高斯和拉普拉斯金字塔以进行不同图像的几个例子。

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