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Mismatch in the classification of linear subspaces: Upper bound to the probability of error

机译:线性子空间分类中的不匹配:误差概率的上限

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This paper studies the performance associated with the classification of linear subspaces corrupted by noise with a mismatched classifier. In particular, we consider a problem where the classifier observes a noisy signal, the signal distribution conditioned on the signal class is zero-mean Gaussian with low-rank covariance matrix, and the classifier knows only the mismatched parameters in lieu of the true parameters. We derive an upper bound to the misclassification probability of the mismatched classifier and characterize its behaviour. Specifically, our characterization leads to sharp sufficient conditions that describe the absence of an error floor in the low-noise regime, and that can be expressed in terms of the principal angles and the overlap between the true and the mismatched signal subspaces.
机译:本文研究了与具有不匹配分类器的噪声损坏的线性子空间分类相关的性能。特别地,我们考虑分类器观察噪声信号的问题,在信号类上调节的信号分布是零均值高斯的,具有低级协方差矩阵,并且分类器仅知道不匹配的参数代替真正参数。我们从上限到错配分类器的错误分类概率并表征其行为。具体地,我们的表征导致尖锐的足够条件,该条件描述了低噪声制度中的错误地板,并且可以以主角和非匹配信号子空间之间的重叠表示。

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