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Face Classification Using Curvature-Based Multi-Scale Morphology

机译:基于曲率的多尺度形态学的人脸分类

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In this paper, we present a novel technique for classification of face images that employs Curvature-based Multi-scale Morphology (CMM). Multi-scale Morphology is an image analysis technique that employs mathematical morphology with structuring elements whose spatial dimensions are scaled successively. This "scale-space" representation of images has proven to be an efficient technique for indexing a large database of images. A majority of the existing techniques for multi-scale morphology employ regular and symmetrical structuring elements like cylinders, hemispheres or circular poweroids. The shape of these structuring elements is controlled only by the scaling parameter. In this paper, we propose the use of a structuring element whose shape is a function of both the scaling factor and the principal curvatures of the intensity surface of the face image. A high-dimensional feature vector is obtained by applying the CMM technique to the face images. The dimensionality of the feature vector is reduced by using the PCA technique, and the low-dimensional feature vectors are analyzed using an Enhanced FLD Model (EFM) for superior classification performance. Experimental results have shown that the proposed CMM technique outperforms existing approaches based on multi-scale morphology.
机译:在本文中,我们提出了一种新颖的用于分类的面部图像,其采用基于曲率的多尺度形态(CMM)。多尺度形态是一种图像分析技术,其采用数学形态与结构化元素,其空间尺寸连续缩放。这种“缩放空间”表示图像表示是一种有效的技术,用于索引大型图像数据库。大多数用于多尺度形态的现有技术采用常规和对称的结构元素,如圆筒,半球或圆形动力曲面。这些结构元素的形状仅由缩放参数控制。在本文中,我们提出了使用结构化元件,其形状是缩放因子和面部强度表面的主要曲率的函数。通过将CMM技术应用于面部图像来获得高维特征向量。通过使用PCA技术减少了特征向量的维度,并且使用增强的FLD模型(EFM)分析了低维特征向量,以进行卓越的分类性能。实验结果表明,所提出的CMM技术基于多尺度形态的现有方法优于现有的方法。

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