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Deep softmax collaborative representation for robust degraded face recognition

机译:深软MAX合作表示强劲退化的人脸识别

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摘要

Deep convolutional neural networks (DCNN) have attracted much attention in the field of face recognition because they have achieved high performance than other approaches in the so-called in-the-wild datasets. However, in many real-world applications of face recognition, the performance of CNN-based algorithms is significantly decreased when images contain various kinds of degradations caused by random noise, motion blur, compression artifacts, uncontrolled illumination, and occlusion. Moreover, this is because the main weakness of existing DCNN models is the overfitting problem. To boost the recognition performance of state-of-the-art deep learning networks, we propose a deep softmax collaborative representation-based network, which can be used as a divide-and-conquer algorithm to help multiple DCCNs work together more effectively to solve multiple sub-problems of face reconstruction and classification. We demonstrated several experiments with challenging face recognition datasets. Our extensive experiments demonstrate that our proposed method is more robust and efficient in dealing with the challenging real-world problems in face recognition compared to related state-of-the-art methods.
机译:深度卷积神经网络(DCNN)在人脸识别领域引起了很多关注,因为它们已经实现了比所谓的野外数据集中所谓的其他方法的性能高。然而,在众多实际应用的人脸识别中,当图像包含由随机噪声,运动模糊,压缩伪像,不受控制的照明和闭塞引起的各种降解时,基于CNN的算法的性能显着降低。此外,这是因为现有DCNN模型的主要弱点是过度装备的问题。为了提高最先进的深度学习网络的识别性能,我们提出了一个基于Deep Softmax协作表示的网络,可以用作划分和征服算法,以帮助多个DCCNS更有效地解决面部重建与分类的多个子问题。我们展示了挑战性面部识别数据集的几个实验。我们的广泛实验表明,与相关的最先进的方法相比,我们的提出方法在处理面部识别方面的挑战性实际问题方面是更强大的。

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