Deep Face Recognition: A Survey

I. Masi, Yuehua Wu, Tal Hassner, P. Natarajan
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引用次数: 58

Abstract

Face recognition made tremendous leaps in the last five years with a myriad of systems proposing novel techniques substantially backed by deep convolutional neural networks (DCNN). Although face recognition performance sky-rocketed using deep-learning in classic datasets like LFW, leading to the belief that this technique reached human performance, it still remains an open problem in unconstrained environments as demonstrated by the newly released IJB datasets. This survey aims to summarize the main advances in deep face recognition and, more in general, in learning face representations for verification and identification. The survey provides a clear, structured presentation of the principal, state-of-the-art (SOTA) face recognition techniques appearing within the past five years in top computer vision venues. The survey is broken down into multiple parts that follow a standard face recognition pipeline: (a) how SOTA systems are trained and which public data sets have they used; (b) face preprocessing part (detection, alignment, etc.); (c) architecture and loss functions used for transfer learning (d) face recognition for verification and identification. The survey concludes with an overview of the SOTA results at a glance along with some open issues currently overlooked by the community.
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深度人脸识别:一项研究
人脸识别在过去五年中取得了巨大的飞跃,无数系统提出了以深度卷积神经网络(DCNN)为基础的新技术。尽管在LFW等经典数据集中使用深度学习的人脸识别性能飙升,导致人们相信这种技术达到了人类的性能,但正如新发布的IJB数据集所证明的那样,在不受约束的环境中,它仍然是一个开放的问题。本调查旨在总结深度人脸识别的主要进展,更一般地说,在学习人脸表征以进行验证和识别方面。该调查提供了一个清晰的,结构化的介绍,主要的,最先进的(SOTA)面部识别技术在过去五年中出现在顶级计算机视觉场所。调查分为多个部分,遵循标准的人脸识别流程:(a)如何训练SOTA系统以及它们使用了哪些公共数据集;(b)人脸预处理部分(检测、对准等);(c)用于迁移学习的架构和损失函数(d)用于验证和识别的人脸识别。调查结束时,概览了SOTA结果,以及目前被社区忽视的一些开放问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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