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Landmark localization on 3D/4D range data using a shape index-based statistical shape model with global and local constraints

机译:使用具有全局和局部约束的基于形状索引的统计形状模型在3D / 4D范围数据上进行地标定位

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摘要

In this paper we propose a novel method for detecting and tracking facial landmark features on 3D static and 3D dynamic (a.k.a. 4D) range data. Our proposed method involves fitting a shape index-based statistical shape model (SI-SSM) with both global and local constraints to the input range data. Our proposed model makes use of the global shape of the facial data as well as local patches, consisting of shape index values, around landmark features. The shape index is used due to its invariance to both lighting and pose changes. The fitting is performed by finding the correlation between the shape model and the input range data. The performance of our proposed method is evaluated in terms of various geometric data qualities, including data with noise, incompletion, occlusion, rotation, and various facial motions. The accuracy of detected features is compared to the ground truth data as well as to start of the art results. We test our method on five publicly available 3D/4D databases: BU-3DFE, BU-4DFE, BP4D-Spontaneous, FRGC 2.0, and Eurecom Kinect Face Dataset. The efficacy of the detected landmarks is validated through applications for geometric based facial expression classification for both posed and spontaneous expressions, and head pose estimation. The merit of our method is manifested as compared to the state of the art feature tracking methods.
机译:在本文中,我们提出了一种用于检测和跟踪3D静态和3D动态(也称为4D)距离数据的面部界标特征的新颖方法。我们提出的方法涉及将具有全局和局部约束的基于形状索引的统计形状模型(SI-SSM)拟合到输入范围数据。我们提出的模型利用了人脸数据的全局形状以及围绕地标特征的局部形状补丁(包括形状索引值)。使用形状索引是因为它对照明和姿势变化均不变。通过找到形状模型和输入范围数据之间的相关性来执行拟合。我们提出的方法的性能是根据各种几何数据质量来评估的,包括带有噪声,不完整,遮挡,旋转和各种面部运动的数据。将检测到的特征的准确性与地面真实数据进行比较,并开始进行现有技术的研究。我们在五个公开的3D / 4D数据库上测试了我们的方法:BU-3DFE,BU-4DFE,BP4D自发,FRGC 2.0和Eurecom Kinect Face Dataset。通过对基于姿势和自发表情的几何面部表情分类以及头部姿势估计的应用,可以验证检测到的界标的功效。与最先进的特征跟踪方法相比,我们的方法的优点得以体现。

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