人脸检测的深度学习:最新进展

Hafiz Syed Ahmed Qasim, M. Shahzad, M. Fraz
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引用次数: 7

摘要

各种各样的应用,如人脸分析,识别,再识别存在,其中使用人脸检测是必要的,因为他们的预处理算法在管道中。过去在人脸检测领域已经做了大量的研究,并提出了各种鲁棒算法,并在不同的数据集上进行了评估。这些技术也部署在各种应用程序中。虽然这个领域看起来很老,而且已经做了很多工作,但仍有改进的余地。以往的研究针对面部姿势、表情、图像尺度和遮挡等问题,并取得了较好的准确性。近年来,人们对低分辨率图像、建议锚点的使用、模型的比例不变性、模型尺寸最小化等高级问题进行了探索,并提出了各种解决方案。在本文中,我们将讨论该领域的最新出版物,它们针对的问题以及它们使用的技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning for Face Detection: Recent Advancements
Various applications like face analysis, recognition, reidentification exist where the use of Face Detection is necessary as their preprocessing algorithm in the pipeline. There has been extensive studies done in the domain of Face Detection in the past, and various robust algorithms have been proposed and evaluated on different datasets. Such techniques are also deployed in various applications. Although it may seem that this domain is very old and much work must have been done in it, there is still room for improvement. Previous studies have targeted issues like facial poses, expressions, scales of images and occlusions, and have achieved good accuracy. In recent years, work on advanced issues like low-resolution images, usage of proposed anchors, scale-invariance of models, minimization of model size, have been explored and various solutions have been proposed. In this paper, we will discuss the state-of-the-art publications in this domain, what issues they are targeting and what technologies they are using.
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