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A jointly local structured sparse deep learning network for face recognition

机译:联合的本地结构化稀疏深度学习网络,用于人脸识别

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In this paper, we proposed an optimized Sparse Deep Learning Network (SDLN) model for Face Recognition (FR). A key contribution of this work is to learn feature coding of human face with a SDLN based on local structured Sparse Representation (SR). In traditional sparse FR methods, different poses and expressions of training samples could have great influence on the recognition results. We consider the SR that should be guided by context constraints which are defined by the correlations of dictionary atoms. The over-complete common dictionary that contains common atom set has been learned from a local region structured sparse encoding process. We obtained over-complete common dictionary and feature coding for each face. As we all know that the deep learning has been widely applied to face feature learning. Using traditional deep learning methods can not contain variations of face identity information. We have to get face features of compatible change in a jointly deep learning network. The proposed SDLN is jointly fine-tuned to optimize for the task of FR. The SDLN achieves high FR performance on the ORL and FERET database.
机译:在本文中,我们提出了一种用于人脸识别(FR)的优化稀疏深度学习网络(SDLN)模型。这项工作的关键贡献是基于局部结构稀疏表示(SR)学习使用SDLN的人脸的特征编码。在传统的稀疏方法中,不同的姿势和训练样本的表达可能对识别结果产生很大影响。我们考虑由上下文约束所指导的SR,这些限制由字典原子的相关性定义。已经从本地区域结构化稀疏编码过程中学习了包含公共ATOM集的完整常见字典。我们获得了全面的完整常见字典和特征编码。由于我们都知道深度学习已被广​​泛应用于面部特色学习。使用传统的深度学习方法不能包含面部身份信息的变体。我们必须在共同深入学习网络中获得兼容变化的面临特征。建议的SDLN共同调整以优化FR的任务。 SDLN在ORL和FERET数据库上实现高FR性能。

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