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Application of the Discriminative Common Vector Approach to one sample problem

机译:鉴别常见的常见载体方法在一个样本问题中的应用

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Matrix-based (2D) methods have advantages over vector-based (1D) methods. Matrix-based methods generally have less computational costs and higher recognition performances with respect to vector-based variants. In this work a two dimensional variation of Discriminative Common Vector Approach (2D-DCVA) is implemented. The performance of the method in single image problem is compared with the one dimensional Discriminative Common Vector Approach (1D-DCVA) and the two dimensional Fisher Linear Discriminant Analysis (2D-FLDA) on ORL, FERET, and YALE face databases. The best recognition performances are achieved in all databases with the proposed method.
机译:基于矩阵的(2D)方法具有基于载体(1D)方法的优点。 基于矩阵的方法通常具有较少的计算成本和相对于基于载体的变体的更高的识别性能。 在这项工作中,实施了鉴别的常见载体方法的二维变化(2D-DCVA)。 将单一图像问题中的方法的性能与ORL,Feret和YOLE面部数据库上的一维鉴别常见的常用矢量方法(1D-DCVA)和二维Flish线性判别分析(2D-FLDA)进行比较。 具有所提出的方法的所有数据库中的最佳识别性能。

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