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Unsupervised Learning of Nonlinear Dependencies in Natural Images

机译:自然图像中非线性依赖性的无监督学习

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摘要

Capturing dependencies in images in an unsupervised manner is important for many image-processing applications and for understanding the structure of natural image signals. Data generative linear models such as principal component analysis and independent component analysis (ICA) have shown to capture low-level features such as oriented edges in images. However, those models only capture linear dependency structures because of its linear model constraints and therefore its modeling capability is limited. We propose a new method for capturing nonlinear dependencies in images of natural scenes. This method is an extension of the linear ICA method and builds on a hierarchical representation. The model makes use of lower-level linear ICA representation and a subsequent mixture of Laplacian distribution for learning the nonlinear dependencies in an image. The model parameters are learned via the expectation maximization algorithm, and it can accurately capture variance correlation and other high-order structures in a simple and consistent manner. We visualize the learned variance correlation structure and demonstrate applications to automatic image segmentation and image denoising.
机译:对于许多图像处理应用程序和理解自然图像信号的结构,以无监督方式捕获图像中的依存关系很重要。数据生成线性模型(例如主成分分析和独立成分分析(ICA))已显示出可捕获低级特征,例如图像中的定向边缘。但是,这些模型由于其线性模型约束而仅捕获线性依赖结构,因此其建模能力受到限制。我们提出了一种捕获自然场景图像中非线性依赖关系的新方法。此方法是线性ICA方法的扩展,并基于分层表示。该模型利用较低级别的线性ICA表示和随后的Laplacian分布混合来学习图像中的非线性相关性。模型参数是通过期望最大化算法学习的,并且可以以简单且一致的方式准确捕获方差相关性和其他高阶结构。我们将学习到的方差相关结构可视化,并演示在自动图像分割和图像去噪中的应用。

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