一种实时人脸识别框架

Samadhi Wickrama Arachchilage, E. Izquierdo
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引用次数: 8

摘要

深度学习技术的出现和广泛应用使人脸识别的准确性在有利的条件下取得了巨大的进步。尽管如此,在经典基准测试(如lfw)上报告的近乎完美的性能并不包括在不受约束的应用程序中的复杂性。本文报道的研究解决了在不利条件下人脸识别的一些关键挑战。在这种情况下,我们引入了一个基于实时视频的端到端人脸识别框架。该系统可以从实时视频中检测、跟踪和识别个人。该系统解决了基于视频的人脸识别系统面临的三个关键挑战:端到端计算复杂性、野外识别和多人识别。我们利用复杂的深度神经网络进行人脸检测和面部特征提取,同时最大限度地减少识别管道中其余模块的计算开销。综合评估表明,该系统可以在无约束条件下,以较高的帧/秒速率有效地识别人脸。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Framework for Real-Time Face-Recognition
The advent and wide use of deep-learning technology has enabled tremendous advancements in the accuracy of face recognition under favourable conditions. Nonetheless, the reported near-perfect performance on classic benchmarks like lfw, does not include complications in unconstrained application. The research reported in this paper addresses some of the critical challenges of face recognition under adverse conditions. In this context, we introduce an end-to-end framework for real-time video-based face recognition. This system detects, tracks and recognizes individuals from live video feed. The proposed system addresses three key challenges of video-based face recognition systems: end-to-end computational complexity, in the wild recognition and multi-person recognition. We exploit sophisticated deep neural networks for face detection and facial feature extraction, while minimizing the computational overhead from the rest of the modules in the recognition pipeline. A comprehensive evaluation shows that the proposed system can effectively recognize faces under unconstrained conditions, at elevated frames per second rates.
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