Deep features-based expression-invariant tied factor analysis for emotion recognition

Sarasi Munasinghe, C. Fookes, S. Sridharan
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引用次数: 6

Abstract

Video-based facial expression recognition is an open research challenge not solved by the current state-of-the-art. On the other hand, static image based emotion recognition is highly important when videos are not available and human emotions need to be determined from a single shot only. This paper proposes sequential-based and image-based tied factor analysis frameworks with a deep network that simultaneously addresses these two problems. For video-based data, we first extract deep convolutional temporal appearance features from image sequences and then these features are fed into a generative model that constructs a low-dimensional observed space for all individuals, depending on the facial expression sequences. After learning the sequential expression components of the transition matrices among the expression manifolds, we use a Gaussian probabilistic approach to design an efficient classifier for temporal facial expression recognition. Furthermore, we analyse the utility of proposed video-based methods for image-based emotion recognition learning static tied factor analysis parameters. Meanwhile, this model can be used to predict the expressive face image sequences from given neutral faces. Recognition results achieved on three public benchmark databases: CK+, JAFFE, and FER2013, clearly indicate our approach achieves effective performance over the current techniques of handling sequential and static facial expression variations.
基于深度特征的表情不变关联因子分析在情感识别中的应用
基于视频的面部表情识别是一个开放的研究挑战,目前最先进的技术尚未解决。另一方面,静态图像的情感识别是非常重要的,当视频不可用,人类的情绪只需要从一个镜头确定。本文提出了基于序列和基于图像的结合因子分析框架与深度网络,同时解决了这两个问题。对于基于视频的数据,我们首先从图像序列中提取深度卷积时间外观特征,然后将这些特征输入到生成模型中,该模型根据面部表情序列为所有个体构建低维观察空间。在学习了表情流形之间转移矩阵的序列表达分量之后,我们使用高斯概率方法设计了一个高效的人脸表情识别分类器。此外,我们分析了所提出的基于视频的方法在基于图像的情感识别学习静态捆绑因子分析参数方面的效用。同时,该模型可用于预测给定中性人脸的表情图像序列。在三个公共基准数据库(CK+、JAFFE和FER2013)上取得的识别结果清楚地表明,我们的方法比当前处理顺序和静态面部表情变化的技术取得了更有效的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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