Adaptive spatio-temporal attention neural network for crossdatabase micro-expression recognition

Q1 Computer Science
Yuhan RAN
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引用次数: 1

Abstract

Background

The use of micro-expression recognition to recognize human emotions is one of the most critical challenges in human-computer interaction applications. In recent years, cross-database micro-expression recognition (CDMER) has emerged as a significant challenge in micro-expression recognition and analysis. Because the training and testing data in CDMER come from different micro-expression databases, CDMER is more challenging than conventional micro-expression recognition.

Methods

In this paper, an adaptive spatio-temporal attention neural network (ASTANN) using an attention mechanism is presented to address this challenge. To this end, the micro-expression databases SMIC and CASME II are first preprocessed using an optical flow approach, which extracts motion information among video frames that represent discriminative features of micro-expression. After preprocessing, a novel adaptive framework with a spatiotemporal attention module was designed to assign spatial and temporal weights to enhance the most discriminative features. The deep neural network then extracts the cross-domain feature, in which the second-order statistics of the sample features in the source domain are aligned with those in the target domain by minimizing the correlation alignment (CORAL) loss such that the source and target databases share similar distributions.

Results

To evaluate the performance of ASTANN, experiments were conducted based on the SMIC and CASME II databases under the standard experimental evaluation protocol of CDMER. The experimental results demonstrate that ASTANN outperformed other methods in relevant crossdatabase tasks.

Conclusions

Extensive experiments were conducted on benchmark tasks, and the results show that ASTANN has superior performance compared with other approaches. This demonstrates the superiority of our method in solving the CDMER problem.

跨数据库微表情识别的自适应时空注意神经网络
使用微表情识别识别人类情绪是人机交互应用中最关键的挑战之一。近年来,跨数据库微表情识别(CDMER)已成为微表情识别和分析领域的一个重大挑战。由于CDMER的训练和测试数据来自不同的微表情数据库,因此CDMER比传统的微表情识别更具挑战性。方法提出了一种基于注意机制的自适应时空注意神经网络(ASTANN)来解决这一问题。为此,首先利用光流方法对微表情数据库SMIC和CASME II进行预处理,提取代表微表情特征的视频帧之间的运动信息。经过预处理,设计了一种具有时空注意模块的自适应框架来分配空间和时间权重,以增强最具区别性的特征。然后,深度神经网络提取跨域特征,其中源域样本特征的二阶统计量与目标域特征的二阶统计量通过最小化相关对齐(CORAL)损失进行对齐,从而使源数据库和目标数据库共享相似的分布。结果为评价ASTANN的性能,在CDMER标准实验评价方案下,基于SMIC和CASME II数据库进行了实验。实验结果表明,ASTANN在相关的跨数据库任务中优于其他方法。结论在基准任务上进行了大量的实验,结果表明,与其他方法相比,ASTANN具有优越的性能。这证明了我们的方法在解决CDMER问题上的优越性。
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来源期刊
Virtual Reality  Intelligent Hardware
Virtual Reality Intelligent Hardware Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
6.40
自引率
0.00%
发文量
35
审稿时长
12 weeks
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