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Facial point detection based on ASMS learning from 3D models

机译:基于3D模型的ASMS学习的面部点检测

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摘要

Detecting a set of facial points is a crucial phase for facial expression analysis and face recognition, yet the robust facial point detector is yet to be developed. In this paper we present a method based on Active Shape Model of Subsets (ASMS) learning from 3D models to drastically reduce the time needed to search for a point's location and increase the accuracy and robustness of the algorithm. Using 3D Information allows us to expand training samples and set up complete point distribution models (PDMs). On the other hand, training samples are grouped into different subsets, which makes detection of the points very fast and the algorithm robust to pose and illumination variations as well. In order to improve the accuracy of location, objective function and parameter optimization process of Active Appearance Model (AAM) will be introduced in ASMS. The proposed point detection algorithm was tested on WHU-3D-2D database, the results of which showed we outperform current state of the art point detectors.
机译:检测一组面部点是面部表情分析和面部识别的关键阶段,但健壮的面部点检测器尚未开发。在本文中,我们提出了一种基于子集活动形状模型(ASMS)的方法,该方法可从3D模型中学习,以大大减少搜索点位置所需的时间,并提高算法的准确性和鲁棒性。使用3D信息,我们可以扩展训练样本并建立完整的点分布模型(PDM)。另一方面,训练样本被分为不同的子集,这使得对点的检测非常快,并且算法对于姿势和光照变化也很健壮。为了提高定位的准确性,主动外观模型(AAM)的目标函数和参数优化过程将在ASMS中引入。在WHU-3D-2D数据库上对提出的点检测算法进行了测试,结果表明我们的性能优于当前的点检测器。

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