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Pattern recognition using higher-order local autocorrelation coefficients

机译:使用高阶局部自相关系数的模式识别

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摘要

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). In this paper we present an effective method for using higher order autocorrelation functions for pattern recognition. We will show that while the autocorrelation feature vectors (described below) are elements of a high dimensional space, one may avoid their explicit computation when the method employed can be expressed in terms of inner products of input vectors. Different typical scenarios of using the autocorrelations will be presented and we will show that the order of autocorrelations is no longer an obstacle.
机译:自相关以前已在广泛的应用中用作1D或2D信号分类的功能,例如纹理分类,面部检测和识别,EEG信号分类等。但是,在几乎所有情况下,高昂的计算成本都阻碍了扩展到更高阶(大于第二阶)的工作。在本文中,我们提出了一种使用高阶自相关函数进行模式识别的有效方法。我们将显示,虽然自相关特征向量(如下所述)是高维空间的元素,但是当所采用的方法可以根据输入向量的内积表示时,可以避免其显式计算。将介绍使用自相关的不同典型场景,并且我们将证明自相关的顺序不再是障碍。

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