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Multi-attention based Deep Neural Network with hybrid features for Dynamic Sequential Facial Expression Recognition

机译:基于多关注的深神经网络,具有动态顺序面部表情识别的混合特征

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In interpersonal communication, the expression is an import way to express one & rsquo;s emotions. In order to make computers understand facial expressions like human beings, a large number of researchers have put a lot of time and energy into it. But for now, most of the work of dynamic sequence facial expression recognition fails to make full use of the combined advantages of shallow features (prior knowledge) and depth features (high-level semantic). Therefore, this paper implements a dynamic sequence facial expression recognition system that integrates shallow features and deep features with the attention mechanism. In order to extract the shallow features, an Attention Shallow Model (ASModel) is proposed by using the relative position of facial landmarks and the texture characteristics of the local area of the face to describe the Action Units of the Facial Action Coding System. And with the advantage of the deep convolutional neural network in expressing high-level features, a Attention Deep Model (ADModel) is also designed to extract deep features on sequence facial images. Finally, the ASModel and the ADModel are integrated to a Multi-attention Shallow and Deep Model (MSDModel) to complete the dynamic sequence facial expression recognition. There are three kinds of attention mechanism introduced, such as Self-Attention (SA), Weight-Attention (WA), and Convolution-Attention (CA). We verify our dynamic expression recognition system on three publicly available databases include CK+, MMI, and OuluCASIA and get superior performance than other state-of-art results.(c) 2020 Elsevier B.V. All rights reserved.
机译:在人际交往中,表达是表达一个和rsquo的进口方式。为了使计算机理解像人类这样的面部表情,大量的研究人员已经将大量的时间和精力放入其中。但是,目前,动态序列面部表情识别的大部分工作都没有充分利用浅景点(现有知识)和深度特征(高级语义)的合并优势。因此,本文实现了一种动态序列面部表情识别系统,其与注意机制集成了浅薄特征和深度特征。为了提取浅特征,通过使用面部地标的相对位置和面部局部区域的纹理特性来提出注意浅模型(ASModel)以描述面部动作编码系统的动作单元。随着深度卷积神经网络在表达高级别特征中的优点,注意深度模型(Capodel)也被设计用于提取序列面部图像上的深度特征。最后,ASModel和Capodel集成到多关注浅和深层模型(MSDModel)以完成动态序列面部表情识别。有三种关注机制引入,如自我关注(SA),重量关注(WA)和卷积关注(CA)。我们在三个公开的数据库中验证了我们的动态表达式识别系统,包括CK +,MMI和Ooulucasia,并比其他最先进的结果获得卓越的性能。(c)2020 Elsevier B.v.保留所有权利。

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