J. Cheney, Benjamin Klein, Anil K. Jain, Brendan Klare
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引用次数: 34
摘要
对无约束人脸图像下人脸检测算法的精度和效率进行了大规模的研究。研究了九种不同的人脸检测算法,这些算法通过政府权利、开源或商业许可获得。用于分析的主要数据集是IAPRA Janus Benchmark A (IJB-A),这是一个最近发布的无约束人脸检测和识别数据集,在本研究时,该数据集包含5712张图像和20408个视频帧中的67183张手动定位的人脸。本研究的目的是确定关于无约束图像的人脸检测技术的现状,这是由开创性的无约束人脸识别数据集的识别精度饱和所驱动的,这些数据集被过滤为仅包含可被商品人脸检测算法检测到的人脸。这项研究最值得注意的发现是,表现最好的检测器仍然无法检测到绝大多数极端姿势、部分遮挡和/或光照不足的人脸。总的来说,超过20%的人脸没有被研究的所有9个检测器检测到。探测器的速度通常与精度相关:速度快的探测器比速度慢的探测器精度低。最后,为进行人脸检测评估提供了关键的考虑因素和指导。所有使用这些方法进行评估和绘制精度的软件都可以在开放源码中获得。
Unconstrained face detection: State of the art baseline and challenges
A large scale study of the accuracy and efficiency of face detection algorithms on unconstrained face imagery is presented. Nine different face detection algorithms are studied, which are acquired through either government rights, open source, or commercial licensing. The primary data set utilized for analysis is the IAPRA Janus Benchmark A (IJB-A), a recently released unconstrained face detection and recognition dataset which, at the time of this study, contained 67,183 manually localized faces in 5,712 images and 20,408 video frames. The goal of the study is to determine the state of the art in face detection with respect to unconstrained imagery which is motivated by the saturation of recognition accuracies on seminal unconstrained face recognition datasets which are filtered to only contain faces detectable by a commodity face detection algorithm. The most notable finding from this study is that top performing detectors still fail to detect the vast majority of faces with extreme pose, partial occlusion, and/or poor illumination. In total, over 20% of faces fail to be detected by all nine detectors studied. The speed of the detectors was generally correlated with accuracy: faster detectors were less accurate than their slower counterparts. Finally, key considerations and guidance is provided for performing face detection evaluations. All software using these methods to conduct the evaluations and plot the accuracies are made available in the open source.