用DCNN表示研究人脸识别中的妨害因素

C. Ferrari, G. Lisanti, S. Berretti, A. Bimbo
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引用次数: 11

摘要

事实证明,基于深度学习的方法在解决许多计算机视觉应用(包括“野外人脸识别”)方面非常有效。已经广泛证明,利用深度卷积神经网络(DCNN)的方法足够强大,可以在很大程度上克服许多对基于手工特征的计算机视觉算法产生负面影响的问题。这些问题包括光照、姿势、表情和遮挡等方面的变化。DCNNs出色的判别能力来自于它们直接从原始图像数据中学习低级和高级表示。考虑到这一点,可以假设DCNN的性能受到输入到网络的原始图像数据的特征的影响。在这项工作中,我们评估了不同的边界盒尺寸、对齐、定位和数据源对使用DCNN进行人脸识别的影响,并对两种知名的公共DCNN架构进行了全面的评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigating Nuisance Factors in Face Recognition with DCNN Representation
Deep learning based approaches proved to be dramatically effective to address many computer vision applications, including "face recognition in the wild". It has been extensively demonstrated that methods exploiting Deep Convolutional Neural Networks (DCNN) are powerful enough to overcome to a great extent many problems that negatively affected computer vision algorithms based on hand-crafted features. These problems include variations in illumination, pose, expression and occlusion, to mention some. The DCNNs excellent discriminative power comes from the fact that they learn low-and high-level representations directly from the raw image data. Considering this, it can be assumed that the performance of a DCNN are influenced by the characteristics of the raw image data that are fed to the network. In this work, we evaluate the effect of different bounding box dimensions, alignment, positioning and data source on face recognition using DCNNs, and present a thorough evaluation on two well known, public DCNN architectures.
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