论文标题

使用深神经网络的稳健面部对齐的多阶段模型

Multistage Model for Robust Face Alignment Using Deep Neural Networks

论文作者

Wang, Huabin, Cheng, Rui, Zhou, Jian, Tao, Liang, Kwan, Hon Keung

论文摘要

概括不受约束的条件(例如严重的遮挡和巨大的姿势变化)的能力仍然是一个具有挑战性的目标。在本文中,提出了基于深神经网络的多阶段模型,该模型利用了空间变压器网络,沙漏网络和基于示例的形状约束。首先,使用卷积层和残留单元组成的空间变压器 - 生成对抗网络来解决面部探测器引起的初始化问题,例如旋转和尺度变化,以获得改进的面部边界框以进行面部对齐。然后,使用堆叠的沙漏网络来获得地标的初步位置及其相应的分数。此外,基于示例的形状词典旨在根据分数高的地标确定得分较低的地标。通过纳入脸部限制,可以大大改善由遮挡或混乱背景引起的未对准地标。进行了基于挑战性基准数据集的广泛实验,以证明所提出的方法的优越性能超过其他最新方法。

An ability to generalize unconstrained conditions such as severe occlusions and large pose variations remains a challenging goal to achieve in face alignment. In this paper, a multistage model based on deep neural networks is proposed which takes advantage of spatial transformer networks, hourglass networks and exemplar-based shape constraints. First, a spatial transformer - generative adversarial network which consists of convolutional layers and residual units is utilized to solve the initialization issues caused by face detectors, such as rotation and scale variations, to obtain improved face bounding boxes for face alignment. Then, stacked hourglass network is employed to obtain preliminary locations of landmarks as well as their corresponding scores. In addition, an exemplar-based shape dictionary is designed to determine landmarks with low scores based on those with high scores. By incorporating face shape constraints, misaligned landmarks caused by occlusions or cluttered backgrounds can be considerably improved. Extensive experiments based on challenging benchmark datasets are performed to demonstrate the superior performance of the proposed method over other state-of-the-art methods.

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