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Complex Function Estimation Using a Stochastic Classification/Regression Framework: Specific Applications to Image Superresolution

机译:使用随机分类/回归框架的复杂功能估计:特定应用到图像超级度

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A stochastic framework combining classification with nonlinear regression is proposed The performance evaluation is tested in terms of a patch-based image superresolution problem. Assuming a multi-variate Gaussian mixture model for the distribution of all image content, unsupervised probabilistic clustering via expectation maximization allows segmentation of the domain. Subsequently, for the regression component of the algorithm, a modified support vector regression provides per class nonlinear regression while appropriately weighting the relevancy of training points during training Relevancy is determined by probabilistic values from clustering. Support vector machines, an established convex optimization problem, provide the foundation for additional formulations of learning the kernel matrix via semi-definite programming problems and quadratically constrained quadratic programming problems.
机译:提出了一种与非线性回归分类组合分类的随机框架,在基于贴片的图像超级化问题方面测试了性能评估。假设用于分布所有图像内容的多变型高斯混合模型,通过期望最大化的无监督概率聚类允许域的分割。随后,对于算法的回归分量,修改的支持向量回归提供每个类非线性回归,同时适当地加权训练相关性期间的训练点的相关性由来自聚类的概率值确定。支持向量机器,建立的凸优化问题,为通过半定编程问题进行了学习内核矩阵的额外配方的基础,并二次规划问题。

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