Mix Emotion Recognition from Facial Expression using SVM-CRF Sequence Classifier

D. Liliana, Chan Basaruddin, M. R. Widyanto
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引用次数: 19

Abstract

Recently, emotion recognition has gained increasing attention in various applications related to Social Signal Processing (SSP) and human affect. The existing research is mainly focused on six basic emotions (happy, sad, fear, disgust, angry, and surprise). However human expresses many kind of emotions, including mix emotion which has not been explored due to its complexity. We model 12 types of mix emotion recognition from facial expression in a sequence of images using two-stages learning which combines Support Vector Machines (SVM) and Conditional Random Fields (CRF) as sequence classifiers. SVM classifies each image frame and produce emotion label output, subsequently it becomes the input for CRF which yields the mix emotion label of the corresponding observation sequence. We evaluate our proposed model on modified image frames of Cohn Kanade+ dataset, and on our own made mix emotion dataset. We also compare our model with the original CRF model, and our model shows a superior performance result.
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基于SVM-CRF序列分类器的面部表情混合情感识别
近年来,情绪识别在与社会信号处理(SSP)和人类情感相关的各种应用中受到越来越多的关注。现有的研究主要集中在六种基本情绪上(快乐、悲伤、恐惧、厌恶、愤怒和惊讶)。然而,人类表达的情感种类很多,其中也包括混合情感,由于其复杂性,混合情感尚未被探索。我们使用两阶段学习,结合支持向量机(SVM)和条件随机场(CRF)作为序列分类器,从一系列图像中的面部表情中对12种类型的混合情绪识别进行建模。SVM对每个图像帧进行分类并产生情感标签输出,然后作为CRF的输入,CRF产生相应观测序列的混合情感标签。我们在Cohn Kanade+数据集的修改图像帧和我们自己制作的混合情感数据集上评估了我们提出的模型。并与原有的CRF模型进行了比较,结果表明我们的模型具有较好的性能效果。
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