IEEE Trans Pattern Anal Mach Intell. 2018 May;40(5):1139-1153. doi: 10.1109/TPAMI.2017.2710183.
In this paper, we propose a context-aware local binary feature learning (CA-LBFL) method for face recognition. Unlike existing learning-based local face descriptors such as discriminant face descriptor (DFD) and compact binary face descriptor (CBFD) which learn each feature code individually, our CA-LBFL exploits the contextual information of adjacent bits by constraining the number of shifts from different binary bits, so that more robust information can be exploited for face representation. Given a face image, we first extract pixel difference vectors (PDV) in local patches, and learn a discriminative mapping in an unsupervised manner to project each pixel difference vector into a context-aware binary vector. Then, we perform clustering on the learned binary codes to construct a codebook, and extract a histogram feature for each face image with the learned codebook as the final representation. In order to exploit local information from different scales, we propose a context-aware local binary multi-scale feature learning (CA-LBMFL) method to jointly learn multiple projection matrices for face representation. To make the proposed methods applicable for heterogeneous face recognition, we present a coupled CA-LBFL (C-CA-LBFL) method and a coupled CA-LBMFL (C-CA-LBMFL) method to reduce the modality gap of corresponding heterogeneous faces in the feature level, respectively. Extensive experimental results on four widely used face datasets clearly show that our methods outperform most state-of-the-art face descriptors.
在本文中,我们提出了一种上下文感知局部二值特征学习(CA-LBFL)方法用于人脸识别。与现有的基于学习的局部人脸描述符(如鉴别脸描述符(DFD)和紧凑二进制脸描述符(CBFD))不同,我们的 CA-LBFL 通过限制来自不同二进制位的移位数量来利用相邻位的上下文信息,从而可以利用更稳健的信息进行人脸表示。给定一张人脸图像,我们首先在局部斑块中提取像素差向量(PDV),并以非监督的方式学习一个有鉴别力的映射,将每个像素差向量投影到一个上下文感知的二进制向量中。然后,我们对学习到的二进制代码进行聚类,构建一个码本,并使用学习到的码本来提取每个人脸图像的直方图特征作为最终表示。为了从不同尺度上利用局部信息,我们提出了一种上下文感知局部二进制多尺度特征学习(CA-LBMFL)方法,用于联合学习用于人脸表示的多个投影矩阵。为了使所提出的方法适用于异构人脸识别,我们分别提出了一种耦合 CA-LBFL(C-CA-LBFL)方法和一种耦合 CA-LBMFL(C-CA-LBMFL)方法,以在特征级别上减少相应异构人脸的模态差距。在四个广泛使用的人脸数据集上的大量实验结果清楚地表明,我们的方法优于大多数最先进的人脸描述符。