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Deep Learning Based Face Recognition with Sparse Representation Classification

机译:基于深度学习的稀疏表示分类人脸识别

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Feature extraction is an essential step in solving real-world pattern recognition and classification problems. The accuracy of face recognition highly depends on the extracted features to represent a face. The traditional algorithms uses geometric techniques, comprising feature values including distance and angle between geometric points (eyes corners, mouth extremities, and nostrils). These features are sensitive to the elements such as illumination, variation of poses, various expressions, to mention a few. Recently, deep learning techniques have been very effective for feature extraction, and deep features have considerable tolerance for various conditions and unconstrained environment. This paper proposes a two layer deep convolutional neural network (CNN) for face feature extraction and applied sparse representation for face identification. The sparsity and selectivity of deep features can strengthen sparseness for the solution of sparse representation, which generally improves the recognition rate. The proposed method outperforms other feature extraction and classification methods in terms of recognition accuracy.
机译:特征提取是解决现实模式识别和分类问题的必不可少的步骤。人脸识别的准确性高度依赖于代表人脸的提取特征。传统算法使用几何技术,包括特征值,这些特征值包括几何点(眼角,嘴角和鼻孔)之间的距离和角度。这些功能对照明,姿势变化,各种表情等元素很敏感,仅举几例。最近,深度学习技术对于特征提取非常有效,并且深度特征对各种条件和不受限制的环境具有相当大的容忍度。提出了一种两层深度卷积神经网络(CNN)用于人脸特征提取和稀疏表示用于人脸识别。深度特征的稀疏性和选择性可以增强稀疏性,以解决稀疏表示的问题,这通常会提高识别率。就识别精度而言,该方法优于其他特征提取和分类方法。

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