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Research on Face Recognition Technology Based on PCA and SVM

机译:基于PCA和SVM的人脸识别技术研究

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The PCA algorithm can simplify the high-dimensional problem into a low-dimensional problem. It is simple and fast, and the principal components are orthogonal to each other, which can eliminate the influence of the original data components. The face recognition technology based on PCA algorithm can remove noise caused by light, posture, and occlusion to some extent. The SVM method using kernel function can solve the nonlinear problem and has perfect classification effect. In this paper, combined with the PCA and SVM methods, dimension reduction and feature extraction are performed on the untrained images, and then the features are input into the SVM using the Gaussian kernel function for training. The performance of the SVM classifier is verified using 10-fold cross validation method. This method is suitable for scenes with high requirement for recognition speed, such as unmanned patrol car in industrial park.
机译:PCA算法可以将高维问题简化为低维问题。它简单快速,主组件彼此正交,可以消除原始数据组件的影响。基于PCA算法的面部识别技术可以在一定程度上消除由光,姿势和闭塞引起的噪声。使用内核功能的SVM方法可以解决非线性问题并具有完美的分类效果。在本文中,与PCA和SVM方法组合,对未培训的图像执行尺寸减小和特征提取,然后使用用于训练的高斯内核函数来输入特征以进行SVM。使用10倍交叉验证方法验证SVM分类器的性能。该方法适用于具有高要求识别速度的场景,例如工业园区的无人巡逻车。

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