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Kernel Mutual Subspace Method and Its Application for Object Recognition

机译:核互子空间方法及其在目标识别中的应用

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In this paper, the authors propose a new object recognition algorithm called the kernel mutual suhspace method. The mutual subspace method proposed by Maeda is a superior technique for implementing robust object recognition by performing a principal component analysis on multiple input images. However, like with the ordinary subspace method, a shortcoming of this technique is that performance deteriorates when the category distribution has a nonlinear structure. To solve this problem, the authors theoretically derived a new object recognition algorithm called the kernel mutual subspace method by applying the kernel nonlinear principal component analysis, which is known as a powerful nonlinear principal component analysis method, to the mutual subspace method. When the proposed technique was applied to an individual identification problem based on facial images, it was apparent that the relationship between the degrees of freedom of the object motion and the subspace dimensionality indicating a high recognition rate could be consistently explained through experiments that used the proposed method, which did not differ significantly from the conventional method at the highest precision. They also showed that the proposed technique could be effective for large-scale recognition problems and that its recognition dictionary has a more compact structure.
机译:在本文中,作者提出了一种新的目标识别算法,称为核互空间方法。前田提出的相互子空间方法是一种通过对多个输入图像执行主成分分析来实现鲁棒对象识别的高级技术。但是,与普通子空间方法一样,该技术的缺点是,当类别分布具有非线性结构时,性能会下降。为了解决这个问题,作者在理论上通过将核非线性主成分分析方法(称为强大的非线性主成分分析方法)应用于相互子空间方法,得出了一种新的对象识别算法,称为核互子空间方法。当将所提出的技术应用于基于面部图像的个体识别问题时,很明显,可以通过使用所提出的实验来一致地解释物体运动的自由度与表示高识别率的子空间维数之间的关系。方法,与传统方法在最高精度上没有显着差异。他们还表明,所提出的技术对于大规模识别问题可能是有效的,并且其识别字典具有更紧凑的结构。

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