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The impact of weak ground truth and facial expressiveness on affect detection accuracy from time-continuous videos of facial expressions

机译:弱地面实况和面部表情对面部表情时间连续视频影响检测准确性的影响

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摘要

In this paper we address two issues concerning real-world time-continuous emotion detection from videos of users' faces: (i) the impact of weak ground truth on the emotion detection accuracy and (ii) the impact of the users' facial expressiveness on the emotion detection accuracy. We implemented an appearance-based emotion detection algorithm that uses Gabor features and a k nearest neighbors classifier. We tested the performance of this algorithm on two datasets with different ground truth strengths (a firm ground truth dataset and a weak ground truth dataset). Then we split the dataset into three subsets reflecting different levels of users' facial expressiveness (low, mid and high) and performed separate emotion detection.
机译:在本文中,我们解决了两个有关从用户面部视频进行实时时间连续情感检测的问题:(i)弱地面实况对情感检测准确性的影响;(ii)用户面部表情对情感检测准确性的影响情绪检测的准确性。我们实现了一种基于外观的情绪检测算法,该算法使用Gabor特征和k个最近邻居分类器。我们在具有不同地面真实强度的两个数据集(牢固地面真实数据集和弱地面真实数据集)上测试了该算法的性能。然后,我们将数据集分为三个子集,分别反映用户面部表情的不同水平(低,中和高),并执行单独的情感检测。

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