用于面部表情分析的身份不变面部地标化

Vassilios Vonikakis, Stefan Winkler
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引用次数: 3

摘要

我们提出了一种二维面部地标的正面化技术,旨在帮助分析面部表情。它采用了一种新的规范化策略,旨在通过将一组面部地标置换到标准化位置来最大限度地减少身份变化。该技术直接在二维地标坐标上操作,不需要额外的特征提取,因此计算量很轻。与参考方法相比,它取得了相当大的改进,证明了它可以作为基于几何特征的面部表情分析的有效预处理步骤。
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Identity-Invariant Facial Landmark Frontalization For Facial Expression Analysis
We propose a frontalization technique for 2D facial landmarks, designed to aid in the analysis of facial expressions. It employs a new normalization strategy aiming to minimize identity variations, by displacing groups of facial landmarks to standardized locations. The technique operates directly on 2D landmark coordinates, does not require additional feature extraction and as such is computationally light. It achieves considerable improvement over a reference approach, justifying its use as an efficient preprocessing step for facial expression analysis based on geometric features.
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