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Non-rigid face tracking with enforced convexity and local appearance consistency constraint

机译:具有强制凸度和局部外观一致性约束的非刚性人脸跟踪

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Convex quadratic fitting (CQF) has demonstrated great success recently in the task of non-rigidly registering a face in a still image using a constrained local model (CLM). A CLM is a commonly used model for non-rigid object registration and contains two components: (ⅰ) local patch-experts that model the appearance of each landmark in the object, and (ⅱ) a global shape prior describing how each of these landmarks can vary non-rigidly. Conventional CLMs can be used in non-rigid facial tracking applications through a track-by-detection strategy. However, the registration performance of such a strategy is susceptible to local appearance ambiguity. Since there is no motion continuity constraint between neighboring frames of the same sequence, the resultant object alignment might not be consistent from frame to frame and the motion field is not temporally smooth. In this paper, we extend the CQF fitting method into the spatio-temporal domain by enforcing the appearance consistency constraint of each local patch between neighboring frames. More importantly, we show, as in the original CQF formulation, that the global warp update can be optimized jointly in an efficient manner. Finally, we demonstrate that our approach receives improved performance for the task of non-rigid facial motion tracking on the videos of clinical patients.
机译:凸二次拟合(CQF)最近在使用约束局部模型(CLM)将人脸非静态地注册到静止图像的任务中显示了巨大的成功。 CLM是用于非刚性对象注册的常用模型,它包含两个组件:(ⅰ)本地修补专家,为对象中每个界标的外观建模;(ⅱ)全局形状,然后描述这些界标中的每一个可以非严格地变化。通过逐个检测策略,常规CLM可以用于非刚性面部跟踪应用中。但是,这种策略的注册性能容易出现局部模棱两可的情况。由于在相同序列的相邻帧之间没有运动连续性约束,因此最终的对象对齐可能在帧与帧之间不一致,并且运动场在时间上不平滑。在本文中,我们通过强制相邻帧之间每个局部补丁的外观一致性约束,将CQF拟合方法扩展到时空域。更重要的是,我们证明,与原始CQF公式一样,可以以有效的方式共同优化全局扭曲更新。最后,我们证明了针对临床患者视频的非刚性面部运动跟踪任务,我们的方法获得了改进的性能。

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