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Sample diversity, representation effectiveness and robust dictionary learning for face recognition

机译:样本多样性,表示效率和强大的字典学习功能可用于人脸识别

摘要

Conventional dictionary learning algorithms suffer from the following problems when applied to face recognition. First, since in most face recognition applications there are only a limited number of original training samples, it is difficult to obtain a reliable dictionary with a large number of atoms from these samples. Second, because the face images of the same person vary with facial poses and expressions as well as illumination conditions, it is difficult to obtain a robust dictionary for face recognition. Thus, obtaining a robust and reliable dictionary is a crucial key to improve the performance of dictionary learning algorithms for face recognition. In this paper, we propose a novel dictionary learning framework to achieve this. The proposed algorithm framework takes training sample diversities of the same face image into account and tries to obtain more effective representations of face images and a more robust dictionary. It first produces virtual face images and then designs an elaborate objective function. Based on this objective function, we obtain a mathematically tractable and computationally efficient algorithm to generate a robust dictionary. Experimental results demonstrate that the proposed algorithm framework outperforms some previous state-of-the-art dictionary learning and sparse coding algorithms in face recognition. Moreover, the proposed algorithm framework can also be applied to other pattern classification tasks.
机译:当将传统的字典学习算法应用于面部识别时,存在以下问题。首先,由于在大多数人脸识别应用中只有有限数量的原始训练样本,因此很难从这些样本中获得具有大量原子的可靠字典。其次,由于同一人的面部图像随面部姿势和表情以及照明条件而变化,因此难以获得用于面部识别的鲁棒词典。因此,获得鲁棒且可靠的字典是提高字典学习算法用于人脸识别性能的关键。在本文中,我们提出了一种新颖的字典学习框架来实现这一目标。所提出的算法框架考虑了训练相同人脸图像的样本多样性,并尝试获得更有效的人脸图像表示和更健壮的字典。它首先产生虚拟面部图像,然后设计精细的目标函数。基于此目标函数,我们获得了数学上易于处理且计算效率高的算法,可以生成健壮的字典。实验结果表明,该算法框架在人脸识别方面优于一些现有的最新词典学习和稀疏编码算法。此外,提出的算法框架还可以应用于其他模式分类任务。

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