Deep Face Image Retrieval: a Comparative Study with Dictionary Learning

A. Tarawneh, Ahmad Hassanat, C. Celik, D. Chetverikov, Mohammad Sohel Rahman, C. Verma
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引用次数: 21

Abstract

Facial image retrieval is a challenging task since faces have many similar features (areas), which makes it difficult for the retrieval systems to distinguish faces of different people. With the advent of deep learning, deep networks are often applied to extract powerful features that are used in many areas of computer vision. This paper investigates the application of different deep learning models’ (layers) for face image retrieval, namely, Alexlayer6, Alexlayer7, VGG16layer6, VGG16layer7, VGG19layer6, and VGG19layer7, with two types of dictionary learning techniques, namely K-means and K-SVD. We also investigate some coefficient learning techniques such as the Homotopy, Lasso, Elastic Net and SSF and their effect on the face retrieval system. The comparative results of the experiments conducted on three standard face image datasets show that the best performers for face image retrieval are Alexlayer7 with K-means and SSF, Alexlayer6 with K-SVD and SSF, and Alexlayer6 with K-means and SSF. The APR and ARR of these methods were further compared to some of the state-of-the-art methods based on local descriptors. The experimental results show that deep learning outperforms most of those methods and therefore can be recommended for use in practice of face image retrieval.
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深度人脸图像检索:与字典学习的比较研究
人脸图像检索是一项具有挑战性的任务,因为人脸具有许多相似的特征(区域),这使得检索系统难以区分不同人的人脸。随着深度学习的出现,深度网络经常被用于提取在计算机视觉的许多领域中使用的强大特征。本文研究了不同深度学习模型(层)在人脸图像检索中的应用,即Alexlayer6、Alexlayer7、VGG16layer6、VGG16layer7、VGG19layer6和VGG19layer7,并采用了两种字典学习技术,即K-means和K-SVD。我们还研究了一些系数学习技术,如同伦、Lasso、Elastic Net和SSF,以及它们对人脸检索系统的影响。在3个标准人脸图像数据集上进行的实验对比结果表明,人脸图像检索效果最好的是基于K-means和SSF的Alexlayer7、基于K-SVD和SSF的Alexlayer6和基于K-means和SSF的Alexlayer6。将这些方法的APR和ARR与一些基于局部描述符的最先进方法进行了进一步的比较。实验结果表明,深度学习优于大多数方法,因此可以推荐用于人脸图像检索的实践。
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