Multi-Scale Promoted Self-Adjusting Correlation Learning for Facial Action Unit Detection

IF 9.8 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE IEEE Transactions on Affective Computing Pub Date : 2024-09-13 DOI:10.1109/TAFFC.2024.3460538
Xin Liu;Kaishen Yuan;Xuesong Niu;Jingang Shi;Zitong Yu;Huanjing Yue;Jingyu Yang
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Abstract

Facial Action Unit (AU) detection is a crucial task in affective computing and social robotics as it helps to identify emotions expressed through facial expressions. Anatomically, there are innumerable correlations between AUs, which contain rich information and are vital for AU detection. Previous methods used fixed AU correlations based on expert experience or statistical rules on specific benchmarks, but it is challenging to comprehensively reflect complex correlations between AUs via hand-crafted settings. There are alternative methods that employ a fully connected graph to learn these dependencies exhaustively. However, these approaches can result in a computational explosion and high dependency with a large dataset. To address these challenges, this paper proposes a novel self-adjusting AU-correlation learning (SACL) method with less computation for AU detection. This method adaptively learns and updates AU correlation graphs by efficiently leveraging the characteristics of different levels of AU motion and emotion representation information extracted in different stages of the network. Moreover, this paper explores the role of multi-scale learning in correlation information extraction, and design a simple yet effective multi-scale feature learning (MSFL) method to promote better performance in AU detection. By integrating AU correlation information with multi-scale features, the proposed method obtains a more robust feature representation for the final AU detection. Extensive experiments show that the proposed method outperforms the state-of-the-art methods on widely used AU detection benchmark datasets, with only 28.7% and 12.0% of the parameters and FLOPs of the best method, respectively.
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用于面部动作单元检测的多尺度促进自调整相关性学习
面部动作单元(AU)检测是情感计算和社交机器人的关键任务,因为它有助于识别通过面部表情表达的情绪。在解剖学上,AU之间存在无数的相关性,这些相关性包含丰富的信息,对AU的检测至关重要。以前的方法使用基于专家经验或特定基准的统计规则的固定AU相关性,但通过手工设置全面反映AU之间的复杂相关性具有挑战性。还有一些替代方法可以使用全连接图来详尽地了解这些依赖关系。然而,这些方法可能会导致计算爆炸和对大型数据集的高度依赖。为了解决这些问题,本文提出了一种计算量较小的自调整AU相关学习(SACL)方法。该方法通过有效地利用在网络的不同阶段提取的不同层次的AU运动特征和情感表征信息,自适应地学习和更新AU相关图。此外,本文还探讨了多尺度学习在相关信息提取中的作用,并设计了一种简单有效的多尺度特征学习(MSFL)方法,以提高AU检测的性能。该方法通过将AU相关信息与多尺度特征相结合,为最终的AU检测获得更鲁棒的特征表示。大量实验表明,在广泛使用的AU检测基准数据集上,该方法的参数和FLOPs分别仅为最佳方法的28.7%和12.0%,优于目前最先进的方法。
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来源期刊
IEEE Transactions on Affective Computing
IEEE Transactions on Affective Computing COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-COMPUTER SCIENCE, CYBERNETICS
CiteScore
15.00
自引率
6.20%
发文量
174
期刊介绍: The IEEE Transactions on Affective Computing is an international and interdisciplinary journal. Its primary goal is to share research findings on the development of systems capable of recognizing, interpreting, and simulating human emotions and related affective phenomena. The journal publishes original research on the underlying principles and theories that explain how and why affective factors shape human-technology interactions. It also focuses on how techniques for sensing and simulating affect can enhance our understanding of human emotions and processes. Additionally, the journal explores the design, implementation, and evaluation of systems that prioritize the consideration of affect in their usability. We also welcome surveys of existing work that provide new perspectives on the historical and future directions of this field.
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