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Probabilistic framework for the adaptation and comparison of image codes

机译:适应和比较图像代码的概率框架

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摘要

We apply a Bayesian method for inferring an optimal basis to the problem of finding efficient image codes for natural scenes. The basis functions learned by the algorithm are oriented and localized in both space and frequency, bearing a resemblance to two-dimensional Gabor functions, and increasing the number of basis functions results in a greater sampling density in position, orientation, and scale. These properties also resemble the spatial receptive fields of neurons in the primary visual cortex of mammals, suggesting that the receptive-field structure of these neurons can be accounted for by a general efficient coding principle. The probabilistic framework provides a method for comparing the coding efficiency of different bases objectively by calculating their probability given the observed data or by measuring the entropy of the basis function coefficients. The learned bases are shown to have better coding efficiency than traditional Fourier and wavelet bases. This framework also provides a Bayesian solution to the problems of image denoising and filling in of missing pixels. We demonstrate that the results obtained by applying the learned bases to these problems are improved over those obtained with traditional techniques.
机译:我们使用贝叶斯方法来推断最佳基础,以解决为自然场景找到有效图像代码的问题。该算法学习到的基本函数在空间和频率上都经过定位和定位,与二维Gabor函数相似,并且增加基本函数的数量会导致位置,方向和范围上的采样密度更高。这些特性也类似于哺乳动物初级视觉皮层中神经元的空间感受野,表明这些神经元的感受野结构可以通过通用的有效编码原理来解释。概率框架提供了一种方法,通过在给定观察数据的情况下计算不同碱基的概率或通过测量基函数系数的熵来客观地比较不同碱基的编码效率。与传统的傅立叶和小波基相比,学习型基具有更好的编码效率。该框架还提供了贝叶斯解决方案来解决图像去噪和丢失像素的填充问题。我们证明,通过将所学基础应用于这些问题而获得的结果比通过传统技术获得的结果有所改善。

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