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Deep Learning Based Representation for Face Recognition

机译:基于深度学习的人脸识别代表

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Face Recognition is one of the challenging process due to huge amount of wild datasets. Deep learning has been provided good solution in terms of recognition performance, as day by day this have been dominating the field of biometric. In this paper our goal is to study deep learning based face representation under several different conditions like lower and upper face occlusions, misalignment, different angles of head poses, changing illuminations, flawed facial feature localization using deep learning approaches. For extraction of face representation two different popular models of Deep learning based called Lightened CNN and VGG-Face and have reflected in this paper. As both of this model show that deep learning model is robust to different types of misalignment and can tolerate localizations error of the intraocular distance.
机译:面部识别是由于巨大的野生数据集引起的具有挑战性的过程之一。在识别性能方面,深入学习已经提供了良好的解决方案,日复一日地占据了生物识别领域。在本文中,我们的目标是在较低和上表面闭塞,未对准,头部的不同角度,改变照明,使用深度学习方法的缺陷面部特征定位等几个不同的条件下研究深入学习的面部表示。为了提取面部表示,两种不同流行的深度学习模型被称为LAMPED CNN和VGG-FACE并反映在本文中。正如这两个模型都表明,深度学习模型对不同类型的错位具有强大,并且可以容忍人工距离的本地化误差。

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