Emotion Recognition from Audio and Visual Data using F-score based Fusion

Abhishek Gera, Arnab Bhattacharya
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引用次数: 10

Abstract

Emotion recognition has been one of the cornerstones of human-computer interaction. Although decades of work has attacked the problem of automatic emotion recognition from either audio or video signals, the fusion of the two modalities is more recent. In this paper, we aim to tackle the problem when both audio and video data are available in a synchronized manner. We address the six basic human emotions, namely, anger, disgust, fear, happiness, sadness, and surprise. We employ an automatic face tracker to extract the different facial points of interest from a video. We then compute feature vectors for each video frame using distances and angles between the tracked points. For audio data, we use the pitch, energy and MFCC to derive feature vectors for each window as well as the entire audio signal. We use two standard techniques, GMM-based HMM and SVM, as the base classifiers. We then design a novel fusion method using the F-score of the base classifiers. We first demonstrate that our fusion approach can increase the accuracy of the base classifiers by as much as 5%. Finally, we show that our fusion-based bi-modal emotion recognition method achieves an overall accuracy of 54% on a publicly available database, which is an improvement upon the current state-of-the-art by 9%.
使用基于f分数的融合从视听数据中识别情感
情感识别一直是人机交互的基石之一。尽管几十年来的工作一直在研究从音频或视频信号中自动识别情感的问题,但两种模式的融合是最近才出现的。在本文中,我们的目标是解决音频和视频数据以同步方式可用时的问题。我们讨论六种基本的人类情绪,即愤怒、厌恶、恐惧、快乐、悲伤和惊讶。我们使用自动面部跟踪器从视频中提取不同的面部兴趣点。然后,我们使用跟踪点之间的距离和角度计算每个视频帧的特征向量。对于音频数据,我们使用音调、能量和MFCC来导出每个窗口以及整个音频信号的特征向量。我们使用两种标准技术,基于gmm的HMM和支持向量机作为基本分类器。然后,我们设计了一种新的融合方法,利用基础分类器的f分数。我们首先证明了我们的融合方法可以将基本分类器的准确率提高5%。最后,我们表明,我们基于融合的双模态情感识别方法在公开可用的数据库上实现了54%的总体准确率,这比当前最先进的技术提高了9%。
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