回顾:微型人脸检测和识别技术

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引用次数: 0

摘要

随着视频和图像数据库的指数级增长,人们需要智能系统来自动分析信息,因为人工分析已不再可行。人脸在社会交往中起着至关重要的作用,传递着身份和情感,因此需要高效准确的分析。深度学习技术尽管增加了计算要求,却为人脸检测带来了重大变革。本文全面分析了基于深度学习的代表性人脸检测方法,重点关注其准确性和效率。本文还比较和讨论了流行的和具有挑战性的数据集,包括它们的评估指标。此外,还对成功的基于深度学习的人脸检测器进行了全面比较,并使用浮点运算(FLOPs)和延迟作为指标对其效率进行了评估。本研究的结果和发现可作为为各种应用选择合适的人脸检测器的宝贵指南。此外,它们还有助于开发更高效、更精确的检测器。本文旨在满足人们对智能系统的迫切需求,使其能够在数据日益驱动的世界中自动理解和分析视觉信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Review: Tiny Face Detection and Recognition Techniques
The exponential growth of video and image databases has created a need for intelligent systems to automatically analyze information, as manual efforts are no longer feasible. Faces plays a crucial role in social interaction, conveying identity and emotions, thus requiring efficient and accurate analysis. Deep learning techniques has brought about a significant revolution in face detection, despite their increased computational requirements. This paper presents a comprehensive analysis of representative deep learning-based methods for face detection, focusing on their accuracy and efficiency. It also compares and discusses popular and challenging datasets, including their evaluation metrics. Additionally, a thorough comparison of successful deep learning-based face detectors is conducted, evaluating their efficiency using Floating Point Operations (FLOPs) and latency as metrics. The results and findings of this study can serve as a valuable guide for selecting suitable face detectors for various applications. Moreover, they can contribute to the development of more efficient and accurate detectors. The paper aims to address the pressing needs for intelligent systems that can automatically understand and analyze visual information in an increasingly data-driven world
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