基于Siamese网络和迁移学习的小样本人脸识别

Mohsen Heidari, Kazim Fouladi-Ghaleh
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引用次数: 24

摘要

目前,基于计算机的人脸识别是一种成熟可靠的机制,与其他生物识别方法一起在许多访问控制场景中得到了广泛的应用。人脸识别包括两个子任务:人脸验证和人脸识别。通过比较一对图像,人脸验证确定这些图像是否与一个人有关;人脸识别必须在数据库中一组可用的人脸中识别出特定的人脸。人脸识别中存在角度、光照、姿态、表情、噪声、分辨率、遮挡等问题,以及一类样本数量少、类数量少等问题。在本文中,我们在由两个相似的cnn组成的暹罗网络中利用迁移学习进行人脸识别。在siamese网络中,将一对两张人脸图像作为输入给网络,然后网络提取这对图像的特征,最后利用相似度准则判断这对图像是否属于同一个人。结果表明,该模型与在包含大量样本的数据集上训练的高级模型具有可比性。此外,与使用少量样本数据集训练的方法相比,该方法提高了人脸识别的准确率,在LFW数据集上的准确率达到95.62%。
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Using Siamese Networks with Transfer Learning for Face Recognition on Small-Samples Datasets
Nowadays, computer-based face recognition is a mature and reliable mechanism that is significantly used in many access control scenarios along with other biometric methods. Face recognition consists of two subtasks including Face Verification and Face Identification. By comparing a pair of images, Face Verification determines whether those images are related to one person or not; and Face Identification has to identify a specific face within a set of available faces in the database. There are many challenges in face recognition such as angle, illumination, pose, facial expression, noise, resolution, occlusion and the few number of one-class samples with several classes. In this paper, we are carrying out face recognition by utilizing transfer learning in a siamese network which consists of two similar CNNs. In the siamese network, a pair of two face images is given to the network as input, then the network extracts the features of this pair of images and finally, it determines whether the pair of images belongs to one person or not by using a similarity criterion. The results show that the proposed model is comparable with advanced models that are trained on datasets containing large numbers of samples. furthermore, it improves the accuracy of face recognition in comparison with methods which are trained using datasets with a few number of samples, and the mentioned accuracy is claimed to be 95.62% on LFW dataset.
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