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Feature extraction technique using hybridization of DWT and DCT for gender classification

机译:DWT与DCT混合的特征提取技术用于性别分类。

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In this paper, a robust technique to construct feature vector for gender classification has been proposed. Discrete Wavelet transform is used in concatenation with Discrete Cosine transform to form the feature vector. Initially, multi-level Discrete Wavelet transform is applied to images to obtain the approximation coefficients of image. Discrete Cosine transform are then calculated for the obtained approximate image. Hybridisation of DWT and DCT reduces the feature vector size significantly. Using this feature vector as input, SVM classifies the images. 2-Fold cross validation dataset is used to learn the SVM optimal parameter. Face images of three different databases i.e. AT@T, Faces94 and Georgia Tech databases are used to evaluate the efficiency of proposed technique for gender classification. Results show that the proposed technique performs better as compare to other state-of-art techniques.
机译:在本文中,提出了一种鲁棒的技术来构造用于性别分类的特征向量。离散小波变换与离散余弦变换结合使用以形成特征向量。最初,将多级离散小波变换应用于图像以获得图像的近似系数。然后为获得的近似图像计算离散余弦变换。 DWT和DCT的混合显着减小了特征向量的大小。使用此特征向量作为输入,SVM对图像进行分类。 2折交叉验证数据集用于学习SVM最佳参数。三种不同数据库的面部图像,即AT @ T,Faces94和Georgia Tech数据库用于评估所提出的性别分类技术的效率。结果表明,与其他最新技术相比,该技术的性能更好。

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