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Face/Non-face Classification Method Based on Partial Face Classifier Using LDA and MLP

机译:基于局部人脸分类器的LDA和MLP人脸/非人脸分类方法

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In this paper, we proposed a face / non-face classification method based on a partial face classifier using LDA and MLP for face detection system. General classifier for face and non-face classification requires many face images and background images for training. In contrast, the classification method based on the partial face classifier uses a constraint of facial structure that a pattern on the center of face must be surrounded with patterns on the boundary of face. So the partial face classifier in this method can reduce the affect of non-face image because itȁ9;s trained by only face images without non-face images. For improving the classification performance and computation efficiency of partial face classifier, the input pattern has to be represented as a low dimensionality by removing redundant and irrelevant features in the high dimensional image. To achieve this purpose, we transform input image into low dimensional pattern by LDA. In the experimental results, the time and space complexity are reduced by 48.9% and 43.6% when the 8 LDA features are used instead of image features. Also in the experiment of partial face classification, the proposed method which uses 8 LDA feature obtains the classification rate 1.7% higher than using image features.
机译:在本文中,我们提出了一种基于局部人脸分类器的人脸/非人脸分类方法,该方法使用LDA和MLP进行人脸检测。用于面部和非面部分类的通用分类器需要许多面部图像和背景图像进行训练。相反,基于部分面部分类器的分类方法使用面部结构的约束,即面部中心的图案必须被面部边界上的图案包围。因此,该方法中的部分人脸分类器可以减少非人脸图像的影响,因为它仅由人脸图像训练,而没有人脸图像的训练量为9。为了提高部分面部分类器的分类性能和计算效率,必须通过去除高维图像中的冗余和不相关特征,将输入模式表示为低维。为了达到这个目的,我们通过LDA将输入图像转换为低维图案。在实验结果中,使用8个LDA特征代替图像特征时,时间和空间复杂度分别降低了48.9%和43.6%。同样在部分人脸分类的实验中,提出的使用8个LDA特征的方法比使用图像特征获得的分类率高1.7%。

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