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Fields of Experts

机译:专家领域

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摘要

We develop a framework for learning generic, expressive image priors that capture the statistics of natural scenes and can be used for a variety of machine vision tasks. The approach provides a practical method for learning high-order Markov random field (MRF) models with potential functions that extend over large pixel neighborhoods. These clique potentials are modeled using the Product-of-Experts framework that uses non-linear functions of many linear filter responses. In contrast to previous MRF approaches all parameters, including the linear filters themselves, are learned from training data. We demonstrate the capabilities of this Field-of-Experts model with two example applications, image denoising and image inpainting, which are implemented using a simple, approximate inference scheme. While the model is trained on a generic image database and is not tuned toward a specific application, we obtain results that compete with specialized techniques.
机译:我们开发了一个学习通用的表达性图像先验的框架,该框架可捕获自然场景的统计数据,并可用于各种机器视觉任务。该方法为学习具有扩展到大像素邻域的潜在函数的高阶马尔可夫随机场(MRF)模型提供了一种实用的方法。这些专家潜力是使用专家产品框架建模的,该产品框架使用了许多线性滤波器响应的非线性函数。与以前的MRF方法相反,所有参数(包括线性滤波器本身)都是从训练数据中学习的。我们用两个示例应用程序(图像降噪和图像修复)演示了此专家领域模型的功能,这两个应用程序是使用简单的近似推理方案实现的。虽然模型是在通用图像数据库上训练的,并且没有针对特定的应用程序进行调整,但我们获得的结果可与专门技术竞争。

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