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Salient-points-guided face alignment

机译:凸点引导的面部对齐

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摘要

Regression-based face alignment approach is fast and accurate but is always limited by the initial face. Aim at limitation of initialization in regression methods, this paper presents a novel two-stage framework named salient-points-guided face alignment. In first stage, we use cascade regression framework to train a salient points (eye centers, nose, mouth corners) localization model. Then the salient points information is used as a guidance for searching the similar faces from training set. In second stage, leveraging the similar faces to generate the initial face for all points regression. In order to give more comprehensive comparison, a new evaluation metric is proposed. Considering the global distance between estimated face and ground-truth, the new evaluation metric is defined as sum of the global distance and the widely used average point-to-point distance. The results show that our approach can achieve state-of-the-art performance (12% higher than the human performance on COFW) and the new evaluation metric is more reasonable.
机译:基于回归的人脸对齐方法快速准确,但始终受初始人脸的限制。针对回归方法中初始化的局限性,本文提出了一种新颖的两阶段框架,即凸点引导的人脸对齐。在第一阶段,我们使用级联回归框架来训练显着点(眼中心,鼻子,嘴角)的定位模型。然后将突出点信息用作从训练集中搜索相似面孔的指导。在第二阶段,利用相似的面孔为所有点回归生成初始面孔。为了进行更全面的比较,提出了一种新的评价指标。考虑到估计的脸部与地面真相之间的全局距离,将新的评估指标定义为全局距离与广泛使用的平均点对点距离之和。结果表明,我们的方法可以实现最先进的性能(比COFW的人类性能高12%),并且新的评估指标更加合理。

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