Face detection is a crucial first step in many facial recognition and face analysis systems. Early approaches for face detection were mainly based on classifiers built on top of hand-crafted features extracted from local image regions, such as Haar Cascades and Histogram of Oriented Gradients. However, these approaches were not powerful enough to achieve a high accuracy on images of from uncontrolled environments. With the breakthrough work in image classification using deep neural networks in 2012, there has been a huge paradigm shift in face detection. Inspired by the rapid progress of deep learning in computer vision, many deep learning based frameworks have been proposed for face detection over the past few years, achieving significant improvements in accuracy. In this work, we provide a detailed overview of some of the most representative deep learning based face detection methods by grouping them into a few major categories, and present their core architectural designs and accuracies on popular benchmarks. We also describe some of the most popular face detection datasets. Finally, we discuss some current challenges in the field, and suggest potential future research directions.
翻译:许多面部识别和面部分析系统迈出了重要的第一步。早期面部检测方法主要基于从当地图像区域提取的手制特征,如Haar Cascades和东方梯度的直映图等手制特征之上的分类器。然而,这些方法不够强大,不足以在不受控制环境中的图像上实现高度精确。2012年,在使用深层神经网络进行图像分类的突破性工作之后,在面部检测方面发生了巨大的范式转变。在计算机愿景深层学习的快速进展的启发下,提出了许多深层次的基于学习的框架,以在过去几年中进行面对面的检测,并取得了显著的准确性。在这项工作中,我们详细概述了一些最具代表性的、基于面部发现方法的深层学习方法,将其分为几个主要类别,并介绍了其核心建筑设计图案和流行基准的精度。我们还描述了一些最受欢迎的面部检测数据集。最后,我们讨论了当前实地的一些挑战,并提出了潜在的未来研究方向。