基于高阶局部自相关系数的模式识别

Vlad Popovici, J. Thiran
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引用次数: 42

摘要

自相关已经作为一维或二维信号分类的特征被广泛应用,如纹理分类、人脸检测与识别、脑电信号分类等。然而,在几乎所有情况下,高昂的计算成本阻碍了向更高阶(超过二阶)的扩展。我们提出了一种避免计算自相关系数的方法,该方法可以应用于统计模式识别中常用的大量工具。我们讨论了使用自相关的不同场景,并表明自相关的顺序不再是一个障碍。
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Pattern recognition using higher-order local autocorrelation coefficients
The autocorrelations have been previously used as features for 1D or 2D signal classification in a wide range of applications, like texture classification, face detection and recognition, EEG signal classification, and so on. However, in almost all the cases, the high computational costs have hampered the extension to higher orders (more than the second order). We present a method which avoids the computation of the autocorrelation coefficients and which can be applied to a large set of tools commonly used in statistical pattern recognition. We discuss different scenarios of using the autocorrelations and we show that the order of autocorrelations is no longer an obstacle.
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