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Human-level face verification with intra-personal factor analysis and deep face representation

机译:通过人内因素分析和深层脸部表情进行人脸面部验证

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摘要

The last two decades have seen an escalating interest in methods for large-scale unconstrained face recognition. While the promise of computer vision systems to efficiently and accurately verify and identify faces in naturally occurring circumstances still remains elusive, recent advances in deep learning are taking us closer to human-level recognition. In this study, the authors propose a new paradigm which employs deep features in a feature extractor and intra-personal factor analysis as a recogniser. The proposed new strategy represents the face changes of a person using identity specific components and the intra-personal variation through reinterpretation of a Bayesian generative factor analysis model. The authors employ the expectation-maximisation algorithm to calculate model parameters which cannot be observed directly. Recognition outcomes achieved through benchmarking on large-scale wild databases, Labeled Faces in the Wild (LFW) and Youtube Face (YTF), clearly prove that the proposed approach provides remarkable face verification performance improvement over state-of-the-art approaches.
机译:在过去的二十年中,人们对大规模无约束人脸识别方法的兴趣日益浓厚。虽然计算机视觉系统在自然发生的情况下有效,准确地验证和识别面部的承诺仍然遥不可及,但深度学习的最新进展使我们更接近于人类层面的认可。在这项研究中,作者提出了一种新的范式,该范式在特征提取器中采用深层特征,并将人内因素分析作为识别器。提出的新策略通过重新解释贝叶斯生成因子分析模型来表示使用特定于身份的组件的人的脸部变化以及人际内部的变化。作者采用期望最大化算法来计算无法直接观察到的模型参数。通过在大型野生数据库,“野生人脸”(LFW)和“ Youtube人脸”(YTF)中进行基准测试而获得的识别结果清楚地证明,与现有技术相比,该方法可显着改善人脸验证性能。

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