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Feature Extraction using Wavelet-PCA and Neural network for application of Object Classification Face Recognition

机译:采用小波PCA和神经网络应用对象分类和面部识别的功能提取

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With the increasing demands of visual surveillance systems, vehicle & people identification at a distance has gained more attention for the researchers recently. Extraction of Information from images and image sequences are vary important for the analysis according to the application. This research proposes feature extraction and classification method using Wavelet The DWT is used to generate the feature images from individual wavelet sub bands. The feature images constructed from Wavelet Coefficients are used as a feature vector for the further process. The Principal Component Analysis (PCA) /Fisher Linear Discrimination analysis is used to reduce the dimensionality of the feature vector. Reduced feature vector are used for further classification using Euclidian distance classifier and neural network Classifier.
机译:随着视觉监测系统的需求日益增加,距离的车辆和人们识别最近的研究人员会更加关注。根据应用的分析,从图像和图像序列提取信息和图像序列的提取变化。本研究提出了使用小波的特征提取和分类方法,该方法使用DWT来生成来自各个小波子带的特征图像。从小波系数构造的特征图像用作进一步处理的特征向量。主要成分分析(PCA)/ Fisher线性判别分析用于减少特征向量的维度。使用欧几里德距离分类器和神经网络分类器,使用减少的特征向量用于进一步分类。

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