基于深度级联模型的人脸识别:当深度层学习遇到小数据时。

IF 10.8 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Lei Zhang, Ji Liu, Bob Zhanga, David Zhangb, Ce Zhu
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引用次数: 0

摘要

基于稀疏表示的分类(SRC)、核规范矩阵回归(NMR)和深度学习(DL)在人脸识别(FR)领域取得了巨大成功。然而,它们之间仍存在一些固有的局限性。基于 SRC 和 NMR 的编码方法属于单步模型,因此无法充分利用编码误差向量的潜在判别信息。DL 作为一种多步骤模型,可以学习强大的表示,但需要依赖大规模的数据和计算资源,通过复杂的反向传播进行大量参数训练。在小规模数据上从零开始直接训练深度神经网络几乎是不可行的。因此,为了开发专门适用于小规模数据的高效算法,我们建议推导出 SRC 和 NMR 的深度模型。具体地说,在本文中,我们提出了一种端到端的深度级联模型(DCM),它基于具有分层学习、非线性变换和多层结构的 SRC 和 NMR,用于损坏的人脸识别。其贡献包括四个方面。首先,提出了一种用于小规模数据的端到端深度级联模型,无需反向传播。第二,为局部特征表示集成了多级金字塔结构。第三,为在分层学习中引入非线性变换,提出了具有类别区分的误差软最大向量编码。第四,现有的表示方法可以很容易地集成到我们的 DCM 框架中。在一些小规模基准 FR 数据集上的实验证明,所提出的模型优于最先进的同行模型。此外,我们还巩固了一种观点,即深度分层学习不一定非要采用反向传播优化的卷积神经网络。演示代码见 https://github.com/liuji93/DCM。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Cascade Model based Face Recognition: When Deep-layered Learning Meets Small Data.

Sparse representation based classification (SRC), nuclear-norm matrix regression (NMR), and deep learning (DL) have achieved a great success in face recognition (FR). However, there still exist some intrinsic limitations among them. SRC and NMR based coding methods belong to one-step model, such that the latent discriminative information of the coding error vector cannot be fully exploited. DL, as a multi-step model, can learn powerful representation, but relies on large-scale data and computation resources for numerous parameters training with complicated back-propagation. Straightforward training of deep neural networks from scratch on small-scale data is almost infeasible. Therefore, in order to develop efficient algorithms that are specifically adapted for small-scale data, we propose to derive the deep models of SRC and NMR. Specifically, in this paper, we propose an end-to-end deep cascade model (DCM) based on SRC and NMR with hierarchical learning, nonlinear transformation and multi-layer structure for corrupted face recognition. The contributions include four aspects. First, an end-to-end deep cascade model for small-scale data without back-propagation is proposed. Second, a multi-level pyramid structure is integrated for local feature representation. Third, for introducing nonlinear transformation in layer-wise learning, softmax vector coding of the errors with class discrimination is proposed. Fourth, the existing representation methods can be easily integrated into our DCM framework. Experiments on a number of small-scale benchmark FR datasets demonstrate the superiority of the proposed model over state-of-the-art counterparts. Additionally, a perspective that deep-layered learning does not have to be convolutional neural network with back-propagation optimization is consolidated. The demo code is available in https://github.com/liuji93/DCM.

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来源期刊
IEEE Transactions on Image Processing
IEEE Transactions on Image Processing 工程技术-工程:电子与电气
CiteScore
20.90
自引率
6.60%
发文量
774
审稿时长
7.6 months
期刊介绍: The IEEE Transactions on Image Processing delves into groundbreaking theories, algorithms, and structures concerning the generation, acquisition, manipulation, transmission, scrutiny, and presentation of images, video, and multidimensional signals across diverse applications. Topics span mathematical, statistical, and perceptual aspects, encompassing modeling, representation, formation, coding, filtering, enhancement, restoration, rendering, halftoning, search, and analysis of images, video, and multidimensional signals. Pertinent applications range from image and video communications to electronic imaging, biomedical imaging, image and video systems, and remote sensing.
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