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Robust Face Recognition Using the Deep C2D-CNN Model Based on Decision-Level Fusion

机译:基于决策级融合的深度C2D-CNN模型进行人脸识别

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摘要

Given that facial features contain a wide range of identification information and cannot be completely represented by a single feature, the fusion of multiple features is particularly significant for achieving a robust face recognition performance, especially when there is a big difference between the test sets and the training sets. This has been proven in both traditional and deep learning approaches. In this work, we proposed a novel method named C2D-CNN (color 2-dimensional principal component analysis (2DPCA)-convolutional neural network). C2D-CNN combines the features learnt from the original pixels with the image representation learnt by CNN, and then makes decision-level fusion, which can significantly improve the performance of face recognition. Furthermore, a new CNN model is proposed: firstly, we introduce a normalization layer in CNN to speed up the network convergence and shorten the training time. Secondly, the layered activation function is introduced to make the activation function adaptive to the normalized data. Finally, probabilistic max-pooling is applied so that the feature information is preserved to the maximum extent while maintaining feature invariance. Experimental results show that compared with the state-of-the-art method, our method shows better performance and solves low recognition accuracy caused by the difference between test and training datasets.
机译:鉴于面部特征包含广泛的识别信息并且不能完全由单个特征表示,因此多个特征的融合对于实现鲁棒的面部识别性能特别重要,尤其是当测试集与训练集。传统和深度学习方法都证明了这一点。在这项工作中,我们提出了一种称为C2D-CNN(彩色二维主成分分析(2DPCA)-卷积神经网络)的新方法。 C2D-CNN将从原始像素学到的特征与CNN所学到的图像表示相结合,然后进行决策级融合,从而可以显着提高人脸识别的性能。此外,提出了一种新的CNN模型:首先,我们在CNN中引入标准化层,以加快网络收敛速度并缩短训练时间。其次,引入分层激活函数以使激活函数适应归一化数据。最后,应用概率最大池化,以便在保持特征不变性的同时最大程度地保留特征信息。实验结果表明,与最新方法相比,我们的方法表现出更好的性能,并解决了由于测试数据集和训练数据集之间的差异而导致的低识别精度。

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