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Accurate and robust facial expression recognition system using real-time YouTube-based datasets

机译:使用基于YouTube的数据集准确和强大的面部表情识别系统

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摘要

This paper presents an accurate and robust real-time FER system. In this system, an unsupervised technique based on active contour (AC) model is adopted in order to detect and extract the human faces automatically from the facial expression frames. In this model, the combination of two energy functions like Chan-Vese (CV) energy and Bhattacharyya distance functions were exploited that not only minimize the dissimilarities within the object (face) but also maximize the distance between the object (face) and background. Moreover, we extracted the facial features by proposing a new feature extraction method in order to solve the limitations of the previous works of the feature extraction. Similarly, in this system, we also proposed the usage of a robust non-linear feature selection method called stepwise linear discriminant analysis (SWLDA) that focuses on selecting localized features from facial expression images and discriminating their classes based on regression values (i.e., partial F-test). Finally, the system has been trained by employing hidden Markov model (HMM) to label the expressions. Unlike most of the previous works that were evaluated using a single dataset in a controlled environment, the performance of the proposed system have been assessed by employing three different spontaneous datasets that have been collected in naturalistic environments. 10-fold cross validation rule has been exploited for the whole experiments. In last, a set of experiments were also performed to assess the effectiveness of each module of the proposed approaches separately. The proposed system achieved weighted average recognition rate (95%) across three different YouTube-based datasets against the existing state-of-the-art methods.
机译:本文提供了准确且坚固的实时FER系统。在该系统中,采用基于主动轮廓(AC)模型的无监督技术,以便自动地从面部表情框架自动检测和提取人面。在该模型中,有两个能量功能(如Chan-Vese(CV)能量和BHATTACHARYYA距离函数)的组合,不仅最小化物体(面)内的异化,而且还最大化物体(面)和背景之间的距离。此外,我们通过提出新的特征提取方法来提取面部特征,以解决特征提取的先前作品的局限性。类似地,在该系统中,我们还提出了一种稳健的非线性特征选择方法,称为逐步线性判别分析(SWLDA),该分析侧重于从面部表情图像中选择本地化特征并基于回归值来识别其类(即,部分F-Test)。最后,通过使用隐藏的马尔可夫模型(HMM)来标记表达式来训练该系统。与在受控环境中使用单个数据集进行评估的最重要的工作不同,通过采用已经在自然界环境中收集的三个不同的自发数据集进行了评估了所提出的系统的性能。为整个实验开发了10倍交叉验证规则。最后,还进行了一组实验,以评估所提出方法的每个模块的有效性。拟议的系统在针对现有最先进的方法中实现了三种不同YouTube的数据集中的加权平均识别率(95%)。

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