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Feature selection method with common vector and discriminative common vector approaches

机译:具有常见载体的特征选择方法和鉴别常见的常见载体方法

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The dimension of the feature vector is very important for real time face recognition applications. High dimensional feature vectors increase the computational complexity and execution time of the face recognition system. In this work, a new feature selection method is proposed related with CVA and DCVA to reduce the dimension of the face images. Experiments are executed on two different face databases, namely AR, FERET. Great dimension reduction is achieved with slight recognition rate loss.
机译:特征向量的维度对于实时面部识别应用非常重要。 高尺寸特征向量增加了面部识别系统的计算复杂性和执行时间。 在这项工作中,提出了一种与CVA和DCVA相关的新特征选择方法,以减少面部图像的尺寸。 实验在两个不同的面部数据库上执行,即Ar,Feret。 通过轻微的识别率损失实现了大维减少。

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