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A Bayesian Scene-Prior-Based Deep Network Model for Face Verification

机译:基于贝叶斯场景优先的深度网络模型用于面部验证

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摘要

Face recognition/verification has received great attention in both theory and application for the past two decades. Deep learning has been considered as a very powerful tool for improving the performance of face recognition/verification recently. With large labeled training datasets, the features obtained from deep learning networks can achieve higher accuracy in comparison with shallow networks. However, many reported face recognition/verification approaches rely heavily on the large size and complete representative of the training set, and most of them tend to suffer serious performance drop or even fail to work if fewer training samples per person are available. Hence, the small number of training samples may cause the deep features to vary greatly. We aim to solve this critical problem in this paper. Inspired by recent research in scene domain transfer, for a given face image, a new series of possible scenarios about this face can be deduced from the scene semantics extracted from other face individuals in a face dataset. We believe that the “scene” or background in an image, that is, samples with more different scenes for a given person, may determine the intrinsic features among the faces of the same individual. In order to validate this belief, we propose a Bayesian scene-prior-based deep learning model in this paper with the aim to extract important features from background scenes. By learning a scene model on the basis of a labeled face dataset via the Bayesian idea, the proposed method transforms a face image into new face images by referring to the given face with the learnt scene dictionary. Because the new derived faces may have similar scenes to the input face, the face-verification performance can be improved without having background variance, while the number of training samples is significantly reduced. Experiments conducted on the Labeled Faces in the Wild (LFW) dataset view #2 subset illustrated that this model can increase the verification accuracy to 99.2% by means of scenes’ transfer learning (99.12% in literature with an unsupervised protocol). Meanwhile, our model can achieve 94.3% accuracy for the YouTube Faces database (DB) (93.2% in literature with an unsupervised protocol).
机译:在过去的二十年中,人脸识别/验证在理论和应用上都受到了极大的关注。深度学习最近被认为是用于改善面部识别/验证性能的非常强大的工具。使用大型标签训练数据集,与浅层网络相比,从深度学习网络获得的特征可以实现更高的准确性。然而,许多报道的面部识别/验证方法严重依赖于训练集的大尺寸和完整代表,并且如果每人可用的训练样本较少,则大多数将导致性能严重下降甚至无法工作。因此,少量的训练样本可能会导致深度特征发生很大变化。我们旨在解决此关键问题。受最近场景域转移研究的启发,对于给定的面部图像,可以根据从面部数据集中其他面部个体提取的场景语义推论出一系列有关该面部的可能场景。我们认为图像中的“场景”或背景,即给定人物的场景具有更多不同的样本,可能会确定同一个人的面部之间的固有特征。为了验证这一信念,我们在本文中提出了一种基于贝叶斯场景优先的深度学习模型,旨在从背景场景中提取重要特征。通过基于贝叶斯思想的标记面部数据集学习场景模型,所提出的方法通过使用学习的场景字典引用给定的面部,将面部图像转换为新的面部图像。由于新派生的面部可能具有与输入面部相似的场景,因此可以在不具有背景差异的情况下提高面部验证性能,同时显着减少训练样本的数量。在“野外标记的脸”(LFW)数据集视图2子集上进行的实验表明,该模型可以通过场景的转移学习将验证准确性提高到99.2%(在无监督协议的文献中为99.12%)。同时,我们的模型可以为YouTube Faces数据库(DB)达到94.3%的准确率(文献中有93.2%的协议带有无监督协议)。

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