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Age-invariant face recognition using multiple descriptors along with modified dimensionality reduction approach

机译:使用多个描述符的年龄不变的面部识别以及改进的降维方法

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摘要

Face recognition on the basis of age variation is a significant yet challenging issue. One among the effective methods to age-invariant face recognition is to form a face aging model that can be utilized to recompense for the aging process in face matching or age assessment. The periocular region of a face is the most age-invariant facial region, to abstract discriminative local features that are distinct for every subject. Feature vector space can be reduced by utilizing the features only from the periocular region. So, in this article, features are only extracted from the periocular region of a face. For feature extraction, multiple descriptors such as Scale Invariant Feature Transform (SIFT) and then Speeded Up Robust Features (SURF). As the extracted features vector has high dimensionality, it is decreased to the low dimensionality using the Enhanced Principal Components Analysis (EPCA) method. Finally, these extracted features are given as input to the Artificial Neural Network (ANN) based classifier which performs to recognize the face of the input image. Our projected method is applied and tested by Matlab for FG-NET face aging dataset Simulation results show that the performance of the proposed approach outperforms that of the existing age-invariant face recognition schemes in terms of accuracy, complexity and false recognition ratio.
机译:基于年龄变化的面部识别是一个重要但具有挑战性的问题。年龄不变的面部识别的有效方法之一是形成面部老化模型,该模型可用于补偿面部匹配或年龄评估中的老化过程。脸部的眼周区域是最不随年龄变化的脸部区域,用于抽象区分每个对象的区别性局部特征。通过仅利用眼周区域的特征可以减少特征向量空间。因此,在本文中,特征仅从面部的眼周区域提取。对于特征提取,使用多个描述符,例如尺度不变特征变换(SIFT),然后是加速鲁棒特征(SURF)。由于提取的特征向量具有高维,因此使用增强主成分分析(EPCA)方法将其降低到低维。最后,将这些提取的特征作为输入提供给基于人工神经网络(ANN)的分类器,该分类器执行以识别输入图像的面部。 Matlab对FG-NET人脸老化数据集进行了应用和测试,仿真结果表明,该方法在准确性,复杂度和错误识别率方面的性能均优于现有的不变年龄人脸识别方案。

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