自然图像中过完备地形表示的层次生成模型

Libo Ma, Liqing Zhang
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引用次数: 8

摘要

本文提出了一种基于稀疏编码和地形能量依赖分析的分层生成模型。通过在附近基函数的系数上定义一个高阶地形,我们进一步将基本稀疏编码表述为一种分层方式。通过对数据似然的直接逼近,导出了一种学习过完备地形基函数的算法。该算法学习的基函数展示了地形组织和相移不变特征的出现-视觉复杂细胞的类似性质。此外,所提出的模型产生了过完备的表示。我们将该模型应用于图像去噪问题。这个任务很适合模型,因为高斯加性噪声显式地包含在模型中。仿真结果表明,该方法优于传统的去噪算法。我们的模型在信号处理和模式识别等领域具有广阔的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hierarchical Generative Model for Overcomplete Topographic Representations in Natural Images
In this paper we propose a hierarchical generative model based on sparse coding and analysis of topographic energy dependencies. We further formulate the basic sparse coding into a hierarchical fashion by defining a higher-order topography on the coefficients of nearby basis functions. An algorithm for learning overcomplete topographic basis functions is derived from a direct approximation to the data likelihood. The basis functions learned by the algorithm demonstrate the topographic organization and the emergence of phase-and shift-invariant features - the similar properties of visual complex cells. Moreover, the proposed model yields overcomplete representations. We apply the model to the problem of image denoising. This task suits the model well since Gaussian additive noise is explicitly included in the model. The simulation results suggest that the proposed method outperforms conventional denoising algorithms. Our model is promising in a wide range of fields, such as signal processing and pattern recognition.
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