The 3D Menpo Facial Landmark Tracking Challenge

S. Zafeiriou, Grigorios G. Chrysos, A. Roussos, Evangelos Ververas, Jiankang Deng, George Trigeorgis
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引用次数: 51

Abstract

Recently, deformable face alignment is synonymous to the task of locating a set of 2D sparse landmarks in intensity images. Currently, discriminatively trained Deep Convolutional Neural Networks (DCNNs) are the state-of-the-art in the task of face alignment. DCNNs exploit large amount of high quality annotations that emerged the last few years. Nevertheless, the provided 2D annotations rarely capture the 3D structure of the face (this is especially evident in the facial boundary). That is, the annotations neither provide an estimate of the depth nor correspond to the 2D projections of the 3D facial structure. This paper summarises our efforts to develop (a) a very large database suitable to be used to train 3D face alignment algorithms in images captured "in-the-wild" and (b) to train and evaluate new methods for 3D face landmark tracking. Finally, we report the results of the first challenge in 3D face tracking "in-the-wild".
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3D门珀面部地标追踪挑战
最近,可变形人脸对齐是在强度图像中定位一组二维稀疏地标的同义词。目前,判别训练的深度卷积神经网络(Deep Convolutional Neural Networks, DCNNs)是人脸识别的前沿技术。DCNNs利用了过去几年出现的大量高质量注释。然而,所提供的2D注释很少捕捉到面部的3D结构(这在面部边界中尤其明显)。也就是说,注释既不提供深度的估计,也不对应于3D面部结构的2D投影。本文总结了我们在以下方面所做的努力:(a)一个非常大的数据库,适合用于在“野外”捕获的图像中训练3D人脸对齐算法;(b)训练和评估3D人脸地标跟踪的新方法。最后,我们报告了“野外”3D人脸跟踪的第一个挑战的结果。
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