小波PCA/LDA神经网络眼部检测

M. Shazri, Najib Ramlee, Chai Tong Yuen
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引用次数: 2

摘要

眼睛检测是人脸识别和验证的重要步骤,因为它不仅提供了一个参考点来归一化位置,而且还提供了一个参考点来归一化人脸相对于图像边界的平面二维方向。所提到的基本技术显示了小波变换如何与神经网络一起工作。本文提出了一个基于小波系数的系统的命题,该系统在小波变换的基础上,采用主成分分析(PCA)和线性判别分析(LDA)两种约简方法作为特征提取技术和神经网络作为人眼检测分类器。实验结果表明,使用本文提出的方法(PCA)在三个数据集上的性能提高了(Internal 10%, ORL 9.2%和Yale 7.5%),从PCA改为LDA特征向量时,总体性能提高了7%。
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Wavelet PCA/LDA Neural Network eye detection
Eye detection is an important step for face recognition and verification because it provides a reference point to normalize not only location but also the flat 2d orientation of face relative to the image border. The base technique that is referred to shows how Wavelet Transformation works hand in hand with Neural Networks. In this paper a proposition of a system that regiment the wavelet coefficient is introduced, as such it includes a reduction methods, namely Principle Component Analysis (PCA) and Linear Discriminant Analysis (LDA) on top of the Wavelet Transform as a feature extraction technique and Neural Network as an eye-detector classifier. Experimental results showed an increased performance (Internal 10%, ORL 9.2% and Yale 7.5%) across three datasets by using the proposed method(PCA) and 7% overall increase of performance when changing from PCA to LDA Eigen Vectors.
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