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FACE AND FACIAL FEATURE DETECTION EVALUATION Performance Evaluation of Public Domain Haar Detectors for Face and Facial Feature Detection

机译:面部和面部特征检测对面部和面部特征检测的面部和面部特征检测评价性能评价

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Fast and reliable face and facial feature detection are required abilities for any Human Computer Interaction approach based on Computer Vision. Since the publication of the Viola-Jones object detection framework and the more recent open source implementation, an increasing number of applications have appeared, particularly in the context of facial processing. In this respect, the OpenCV community shares a collection of public domain classifiers for this scenario. However, as far as we know these classifiers have never been evaluated and/or compared. In this paper we analyze the individual performance of all those public classifiers getting the best performance for each target. These results are valid to define a baseline for future approaches. Additionally we propose a simple hierarchical combination of those classifiers to increase the facial feature detection rate while reducing the face false detection rate.
机译:基于计算机视觉的任何人机交互方法都需要快速可靠的面部和面部特征检测。自从中提琴对象检测框架的出版以来,近期开源实现,越来越多的应用程序出现,特别是在面部处理的上下文中。在这方面,OpenCV社区共享一系列该场景的公共领域分类器。但是,据我们所知,这些分类器从未评估和/或比较。在本文中,我们分析了所有这些公共分类器的个人表现,为每个目标获得最佳性能。这些结果有效,以便为未来的方法定义基线。此外,我们提出了一种简单的分类器的分层组合,以增加面部特征检测率,同时降低面部假检测率。

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