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Generalized feature extraction using expansion matching

机译:使用扩展匹配的广义特征提取

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摘要

A novel generalized feature extraction method based on the expansion matching (EXM) method and on the Karhunen-Loeve transform (KLT) is presented. The method provides an efficient way to locate complex features of interest like corners and junctions with reduced number of filtering operations. The EXM method is used to design optimal detectors for a set of model elementary features. The KL representation of these model EXM detectors is used to filter the image and detect candidate interest points from the energy peaks of the eigen coefficients. The KL coefficients at these candidate points are then used to efficiently reconstruct the response and differentiate real junctions and corners from arbitrary features in the image. The method is robust to additive noise and is able to successfully extract, classify, and find the myriad compositions of corner and junction features formed by combinations of two or more edges or lines. This method differs from previous works in several aspects. First, it treats the features not as distinct entities, but as combinations of elementary features. Second, it employs an optimal set of elementary feature detectors based on the EM approach. Third, the method incorporates a significant reduction in computational complexity by representing a large set of EXM filters by a relatively small number of eigen filters derived by the KL transform of the basic EXM filter set. This is a novel application of the KL transform, which is usually employed to represent signals and not impulse responses as in our present work.
机译:提出了一种基于扩展匹配(EXM)方法和Karhunen-Loeve变换(KLT)的广义特征提取方法。该方法提供了一种有效的方式来以减少的滤波操作数量来定位感兴趣的复杂特征,例如拐角和交叉点。 EXM方法用于为一组模型基本特征设计最佳检测器。这些模型EXM检测器的KL表示用于过滤图像并从本征系数的能量峰中检测候选兴趣点。然后使用这些候选点的KL系数来有效地重建响应,并将真实的交界处和拐角与图像中的任意特征区分开。该方法对加性噪声具有鲁棒性,并且能够成功地提取,分类和找到由两条或更多条边或线的组合形成的角和接合点特征的无数组成。该方法在几个方面与以前的工作不同。首先,它不将要素视为不同的实体,而是将其视为基本要素的组合。其次,它采用了基于EM方法的一组最佳的基本特征检测器。第三,该方法通过用相对较少数量的由基本EXM滤波器组的KL变换得出的本征滤波器来表示大量的EXM滤波器,从而大大降低了计算复杂度。这是KL变换的一种新颖应用,通常用于表示信号而不是像我们目前的工作中的脉冲响应。

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