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Learning sparse covariance patterns for natural scenes

机译:学习自然场景的稀疏协方差模式

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摘要

For scene classification, patch-level linear features do not always work as well as handcrafted features. In this paper, we present a new model to greatly improve the usefulness of linear features in classification by introducing co-variance patterns. We analyze their properties, discuss the fundamental importance, and present a generative model to properly utilize them. With this set of covariance information, in our framework, even the most naive linear features that originally lack the vital ability in classification become powerful. Experiments show that the performance of our new covariance model based on linear features is comparable with or even better than handcrafted features in scene classification.
机译:对于场景分类,面片级线性特征并不总是像手工特征那样起作用。在本文中,我们提出了一个新模型,通过引入协方差模式可以大大提高线性特征在分类中的实用性。我们分析了它们的特性,讨论了其根本重要性,并提出了一种生成模型以正确利用它们。有了这组协方差信息,在我们的框架中,即使最初缺乏分类能力的最简单的线性特征也会变得强大。实验表明,在场景分类中,基于线性特征的新协方差模型的性能与手工特征相当甚至更好。

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