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Multi-output Laplacian Dynamic Ordinal Regression for Facial Expression Recognition and Intensity Estimation

机译:用于面部表情识别和强度估计的多输出拉普拉斯动态有序回归

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摘要

Automated facial expression recognition has received increased attention over the past two decades. Existing works in the field usually do not encode either the temporal evolution or the intensity of the observed facial displays. They also fail to jointly model multidimensional (multi-class) continuous facial behaviour data; binary classifiers - one for each target basic-emotion class - are used instead. In this paper, intrinsic topology of multidimensional continuous facial affect data is first modeled by an ordinal manifold. This topology is then incorporated into the Hidden Conditional Ordinal Random Field (H-CORF) framework for dynamic ordinal regression by constraining H-CORF parameters to lie on the ordinal manifold. The resulting model attains simultaneous dynamic recognition and intensity estimation of facial expressions of multiple emotions. To the best of our knowledge, the proposed method is the first one to achieve this on both deliberate as well as spontaneous facial affect data.
机译:在过去的二十年中,自动化的面部表情识别越来越受到关注。该领域中的现有作品通常不对观察到的面部显示的时间演变或强度进行编码。他们也无法共同为多维(多类)连续面部行为数据建模。而是使用二进制分类器(每个目标基本情感分类一个)。在本文中,多维连续面部表情数据的固有拓扑首先通过有序流形建模。然后,通过将H-CORF参数约束在有序流形上,将此拓扑合并到隐藏条件有序随机字段(H-CORF)框架中,以进行动态有序回归。结果模型可以同时动态识别和评估多种情绪的面部表情。据我们所知,所提出的方法是第一个在有意以及自发的面部情感数据上实现此目标的方法。

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