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Efficient algorithms for inferences on Grassmann manifolds

机译:格拉斯曼流形上的高效推理算法

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Linear representations and linear dimension reduction techniques are very common in signal and image processing. Many such applications reduce to solving problems of stochastic optimizations or statistical inferences on the set of all subspaces, i.e. a Grassmann manifold. Central to solving them is the computation of an "exponential" map (for constructing geodesies) and its inverse on a Grassmannian. Here we suggest efficient techniques for these two steps and illustrate two applications: (i) For image-based object recognition, we define and seek an optimal linear representation using a Metropolis-Hastings type, stochastic search algorithm on a Grassmann manifold, (ii) For statistical inferences, we illustrate computation of sample statistics, such as mean and variances, on a Grassmann manifold.
机译:线性表示和线性降维技术在信号和图像处理中非常普遍。许多这样的应用简化为解决所有子空间的集合(即格拉斯曼流形)上的随机优化或统计推断的问题。解决这些问题的关键是计算“指数”地图(用于构造测地线)及其在Grassmannian上的逆。在这里,我们为这两个步骤提供了有效的技术,并说明了两种应用:(i)对于基于图像的对象识别,我们使用Metropolis-Hastings类型的格拉斯曼流形上的随机搜索算法定义和寻求最佳线性表示,(ii)对于统计推断,我们说明了在格拉斯曼流形上样本统计的计算,例如均值和方差。

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