Deep pair-wise similarity learning for face recognition

Klemen Grm, S. Dobrišek, V. Štruc
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引用次数: 6

Abstract

Recent advances in deep learning made it possible to build deep hierarchical models capable of delivering state-of-the-art performance in various vision tasks, such as object recognition, detection or tracking. For recognition tasks the most common approach when using deep models is to learn object representations (or features) directly from raw image-input and then feed the learned features to a suitable classifier. Deep models used in this pipeline are typically heavily parameterized and require enormous amounts of training data to deliver competitive recognition performance. Despite the use of data augmentation techniques, many application domains, predefined experimental protocols or specifics of the recognition problem limit the amount of available training data and make training an effective deep hierarchical model a difficult task. In this paper, we present a novel, deep pair-wise similarity learning (DPSL) strategy for deep models, developed specifically to overcome the problem of insufficient training data, and demonstrate its usage on the task of face recognition. Unlike existing (deep) learning strategies, DPSL operates on image-pairs and tries to learn pair-wise image similarities that can be used for recognition purposes directly instead of feature representations that need to be fed to appropriate classification techniques, as with traditional deep learning pipelines. Since our DPSL strategy assumes an image pair as the input to the learning procedure, the amount of training data available to train deep models is quadratic in the number of available training images, which is of paramount importance for models with a large number of parameters. We demonstrate the efficacy of the proposed learning strategy by developing a deep model for pose-invariant face recognition, called Pose-Invariant Similarity Index (PISI), and presenting comparative experimental results on the FERET an IJB-A datasets.
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用于人脸识别的深度配对相似性学习
深度学习的最新进展使得建立能够在各种视觉任务(如物体识别、检测或跟踪)中提供最先进性能的深度分层模型成为可能。对于识别任务,使用深度模型时最常见的方法是直接从原始图像输入中学习对象表示(或特征),然后将学习到的特征提供给合适的分类器。在这个管道中使用的深度模型通常是高度参数化的,需要大量的训练数据来提供有竞争力的识别性能。尽管使用了数据增强技术,但许多应用领域、预定义的实验协议或识别问题的细节限制了可用训练数据的数量,并使训练有效的深度层次模型成为一项艰巨的任务。在本文中,我们提出了一种针对深度模型的新颖的深度配对相似学习(DPSL)策略,专门用于克服训练数据不足的问题,并展示了其在人脸识别任务中的应用。与现有的(深度)学习策略不同,DPSL在图像对上操作,并尝试学习可直接用于识别目的的成对图像相似性,而不是像传统的深度学习管道那样需要将特征表示提供给适当的分类技术。由于我们的DPSL策略假设一个图像对作为学习过程的输入,因此可用于训练深度模型的训练数据量在可用训练图像数量中是二次的,这对于具有大量参数的模型至关重要。我们通过开发一个姿态不变人脸识别的深度模型(称为姿态不变相似指数(PISI))来证明所提出的学习策略的有效性,并在FERET和IJB-A数据集上展示了比较实验结果。
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