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300 Faces In-The-Wild Challenge: database and results

机译:300 Faces的野外挑战:数据库和结果

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Computer Vision has recently witnessed great research advance towards automatic facial points detection. Numerous methodologies have been proposed during the last few years that achieve accurate and efficient performance. However, fair comparison between these methodologies is infeasible mainly due to two issues. (a) Most existing databases, captured under both constrained and unconstrained (in-the-wild) conditions have been annotated using different mark-ups and, in most cases, the accuracy of the annotations is low. (b) Most published works report experimental results using different training/testing sets, different error metrics and, of course, landmark points with semantically different locations. In this paper, we aim to overcome the aforementioned problems by (a) proposing a semi-automatic annotation technique that was employed to re-annotate most existing facial databases under a unified protocol, and (b) presenting the 300 Faces In The-Wild Challenge (300-W), the first facial landmark localization challenge that was organized twice, in 2013 and 2015. To the best of our knowledge, this is the first effort towards a unified annotation scheme of massive databases and a fair experimental comparison of existing facial landmark localization systems. The images and annotations of the new testing database that was used in the 300-W challenge are available from http://ibug.docic.ac.uk/resources/300-W_IMAVISi. (C) 2016 Elsevier B.V. All rights reserved.
机译:最近,计算机视觉见证了自动面部点检测的巨大研究进展。在过去的几年中,已经提出了许多方法来实现准确而有效的性能。但是,主要由于两个问题,这些方法之间的公平比较是不可行的。 (a)大多数现有数据库,无论是在约束条件下还是在不受约束条件下(野生)捕获的,都使用不同的标记进行注释,并且在大多数情况下,注释的准确性很低。 (b)大多数出版的作品使用不同的训练/测试集,不同的误差度量,当然还有语义上不同的地标点来报告实验结果。在本文中,我们旨在通过以下方法克服上述问题:(a)提出一种半自动注释技术,该技术用于在统一协议下重新注释大多数现有的面部数据库,以及(b)呈现300张野生面孔挑战(300-W),这是在2013年和2015年两次组织的第一次面部标志性本地化挑战。据我们所知,这是首次尝试建立统一的大规模数据库注释方案,并对现有数据库进行公平的实验比较面部标志性定位系统。可从http://ibug.docic.ac.uk/resources/300-W_IMAVISi获得300 W挑战中使用的新测试数据库的图像和注释。 (C)2016 Elsevier B.V.保留所有权利。

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