A Survey for Conventional Regression- and Deep Learning-based Face Alignment Methods

Tong Gao
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引用次数: 1

Abstract

Face alignment, as an important part of facial tasks, will affect the final efficiency and accuracy. Face alignment is to locate the exact shape of a detected face bounding box. There are amount of challenges in face alignment because of large poses, occlusions and illuminations in real-world conditions. The approaches to tackle these challenges can be categorized in methods based on regression, which require operators in feature extraction, and methods based on deep learning, in which the feature extraction is data driven. Methods applies regression include Supervised Descent Method and Face Alignment by Coarse-to-Fine Shape Searching. Deep Convolutional Neural Networks, Tasks-Constrained Deep Convolutional Network and Multi-task Cascaded Convolutional Networks apply cascaded CNN and they are representational approaches of deep learning method. This article is devoted to the elaboration and summary of these mainstream methods.
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基于传统回归和深度学习的人脸对齐方法综述
人脸对齐作为人脸任务的重要组成部分,直接影响到最终的效率和精度。人脸对齐是定位被检测人脸边界框的精确形状。由于现实世界条件下的大姿势、遮挡和照明,在面部对齐方面存在大量挑战。解决这些挑战的方法可以分为基于回归的方法和基于深度学习的方法,前者需要算子进行特征提取,后者的特征提取是数据驱动的。应用回归的方法包括监督下降法和由粗到细形状搜索的人脸对齐。深度卷积神经网络、任务约束深度卷积网络和多任务级联卷积网络应用了级联CNN,是深度学习方法的表征方法。本文致力于对这些主流方法进行阐述和总结。
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