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Ensemble of Deep Convolutional Neural Networks With Gabor Face Representations for Face Recognition

机译:具有Gabor面部表示的深度卷积神经网络的集合

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Most DCNN-based FR approaches typically employ grayscale or RGB color images as input representations of DCNN architectures. However, other effective face representation methods have been developed and incorporated into current practical FR systems. In light of this fact, the focus of our study is to employ Gabor face representations in the design of DCNN-based FR frameworks to improve FR performance. To this end, we develop a novel "Gabor DCNN (GDCNN) ensemble" method that effectively applies different and multiple Gabor face representations as inputs during the training and testing phases of a DCNN for FR applications. The proposed GDCNN ensemble method primarily consists of two parts: 1) GDCNN ensemble construction and 2) GDCNN ensemble combination. The goal of the former part is to build an ensemble of GDCNN members (i.e., base models), each learned with a particular type of Gabor face representation. The objective of the latter part is to adaptively combine multiple FR outputs of individual GDCNN members. We perform extensive experiments to evaluate our proposed method on four public face databases (DBs) using the associated standard evaluation protocols. Experimental results demonstrate that our approach exhibits significantly better FR performance than typical DCNN-based approaches that rely only on grayscale or color face images as input representations. In addition, the feasibility of our proposed GDCNN ensemble has been successfully demonstrated by making comparisons with other state-of-the-art DCNN-based FR methods.
机译:大多数基于DCNN的FR方法通常使用灰度或RGB彩色图像作为DCNN架构的输入表示。然而,已经开发了其他有效的面部表示方法并将其结合到电流实用的FR系统中。鉴于这一事实,我们的研究焦点是在基于DCNN的FR框架的设计中雇用Gabor面部表示,以改善FR性能。为此,我们开发了一种新颖的“Gabor DCNN(GDCNN)集合”方法,其有效地将不同的和多个Gabor面部表示作为FR应用程序的DCNN的训练和测试阶段的输入。所提出的GDCNN集合方法主要由两部分组成:1)GDCNN集合结构和2)GDCNN集合组合。前者的目标是建立一个GDCNN成员(即基础模型)的集合,每个人都以特定类型的Gabor面对代表学习。后者部分的目的是自适应地结合各个GDCNN成员的多个FR输出。我们使用相关的标准评估协议执行广泛的实验来评估四个公共面部数据库(DBS)的提出方法。实验结果表明,我们的方法比仅依赖于灰度或彩色面部图像作为输入表示的典型DCNN的方法,我们的方法明显更好。此外,通过与其他基于最先进的DCNN的FR方法进行比较,已经成功地证明了我们提出的GDCNN集合的可行性。

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