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Single Sample Face Recognition via Learning Deep Supervised Autoencoders

机译:通过学习深度监督自动编码器进行单样本人脸识别

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This paper targets learning robust image representation for single training sample per person face recognition. Motivated by the success of deep learning in image representation, we propose a supervised autoencoder, which is a new type of building block for deep architectures. There are two features distinct our supervised autoencoder from standard autoencoder. First, we enforce the faces with variants to be mapped with the canonical face of the person, for example, frontal face with neutral expression and normal illumination; Second, we enforce features corresponding to the same person to be similar. As a result, our supervised autoencoder extracts the features which are robust to variances in illumination, expression, occlusion, and pose, and facilitates the face recognition. We stack such supervised autoencoders to get the deep architecture and use it for extracting features in image representation. Experimental results on the AR, Extended Yale B, CMU-PIE, and Multi-PIE data sets demonstrate that by coupling with the commonly used sparse representation-based classification, our stacked supervised autoencoders-based face representation significantly outperforms the commonly used image representations in single sample per person face recognition, and it achieves higher recognition accuracy compared with other deep learning models, including the deep Lambertian network, in spite of much less training data and without any domain information. Moreover, supervised autoencoder can also be used for face verification, which further demonstrates its effectiveness for face representation.
机译:本文旨在针对每人脸识别的单个训练样本学习鲁棒的图像表示。受到图像表示中深度学习成功的推动,我们提出了一种受监督的自动编码器,它是用于深度架构的一种新型构建块。我们的监督型自动编码器与标准自动编码器有两个不同的功能。首先,我们将具有变体的面部强制与人的规范面部映射,例如具有中性表情和法线照明的正面面部;其次,我们将与同一个人对应的功能强制为相似。结果,我们的监督自动编码器提取了对光照,表情,遮挡和姿势变化具有鲁棒性的特征,并有助于面部识别。我们将这种受监督的自动编码器进行堆叠,以获得深度的体系结构,并将其用于提取图像表示中的特征。在AR,Extended Yale B,CMU-PIE和Multi-PIE数据集上的实验结果表明,通过与常用的基于稀疏表示的分类结合,我们基于监督自动编码器的堆叠式脸部表示明显优于常用的基于图像的表示。每人只有一个样本的人脸识别,尽管训练数据少得多,并且没有任何领域信息,但与其他深度学习模型(包括深度Lambertian网络)相比,它实现了更高的识别精度。此外,监督式自动编码器还可用于人脸验证,这进一步证明了其在人脸表示中的有效性。

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