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首页> 外文期刊>IEEE Transactions on Biometrics, Behavior, and Identity Science >A Fast and Accurate System for Face Detection, Identification, and Verification
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A Fast and Accurate System for Face Detection, Identification, and Verification

机译:快速,准确的人脸检测,识别和验证系统

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摘要

The availability of large annotated datasets and affordable computation power have led to impressive improvements in the performance of convolutional neural networks (CNNs) on various face analysis tasks. In this paper, we describe a deep learning pipeline for unconstrained face identification and verification which achieves state-of-the-art performance on several benchmark datasets. We provide the design details of the various modules involved in automatic face recognition: face detection, landmark localization and alignment, and face identification/verification. We propose a novel face detector, deep pyramid single shot face detector (DPSSD), which is fast and detects faces with large scale variations (especially tiny faces). Additionally, we propose a new loss function, called crystal loss, for the tasks of face verification and identification. Crystal loss restricts the feature descriptors to lie on a hypersphere of a fixed radius, thus minimizing the angular distance between positive subject pairs and maximizing the angular distance between negative subject pairs. We provide evaluation results of the proposed face detector on challenging unconstrained face detection datasets. Then, we present experimental results for end-to-end face verification and identification on IARPA Janus Benchmarks A, B, and C (IJB-A, IJB-B, IJB-C), and the Janus Challenge Set 5 (CS5).
机译:大型带注释的数据集的可用性和可承受的计算能力已导致卷积神经网络(CNN)在各种面部分析任务上的性能得到显着改善。在本文中,我们描述了一种用于无约束人脸识别和验证的深度学习管道,该管道可在多个基准数据集上实现最先进的性能。我们提供了自动面部识别所涉及的各个模块的设计细节:面部检测,界标定位和对齐以及面部识别/验证。我们提出了一种新颖的面部检测器,即深金字塔单发面部检测器(DPSSD),该检测器速度快并且可以检测出具有较大比例变化的面部(尤其是细小的面部)。此外,我们提出了一种新的损耗函数,称为晶体损耗,用于面部验证和识别。晶体损耗将特征描述符限制在固定半径的超球面上,从而最小化正对象对之间的角距离并最大化负对象对之间的角距离。我们提供了具有挑战性的无约束人脸检测数据集上提出的人脸检测器的评估结果。然后,我们介绍了针对IARPA Janus基准A,B和C(IJB-A,IJB-B,IJB-C)和Janus挑战集5(CS5)进行端到端面部验证和识别的实验结果。

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