Less is More: Facial Landmarks can Recognize a Spontaneous Smile

Md. Tahrim Faroque, Yan Yang, Md. Zakir Hossain, S. M. Naim, Nabeel Mohammed, Shafin Rahman
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引用次数: 1

Abstract

Smile veracity classification is a task of interpreting social interactions. Broadly, it distinguishes between spontaneous and posed smiles. Previous approaches used hand-engineered features from facial landmarks or considered raw smile videos in an end-to-end manner to perform smile classification tasks. Feature-based methods require intervention from human experts on feature engineering and heavy pre-processing steps. On the contrary, raw smile video inputs fed into end-to-end models bring more automation to the process with the cost of considering many redundant facial features (beyond landmark locations) that are mainly irrelevant to smile veracity classification. It remains unclear to establish discriminative features from landmarks in an end-to-end manner. We present a MeshSmileNet framework, a transformer architecture, to address the above limitations. To eliminate redundant facial features, our landmarks input is extracted from Attention Mesh, a pre-trained landmark detector. Again, to discover discriminative features, we consider the relativity and trajectory of the landmarks. For the relativity, we aggregate facial landmark that conceptually formats a curve at each frame to establish local spatial features. For the trajectory, we estimate the movements of landmark composed features across time by self-attention mechanism, which captures pairwise dependency on the trajectory of the same landmark. This idea allows us to achieve state-of-the-art performances on UVA-NEMO, BBC, MMI Facial Expression, and SPOS datasets.
少即是多:面部标志可以识别一个自发的微笑
微笑真实性分类是一项解释社会互动的任务。从广义上讲,它区分了自发的微笑和做作的微笑。以前的方法是使用手工设计的面部特征,或者以端到端的方式考虑原始的微笑视频来执行微笑分类任务。基于特征的方法需要人类专家介入特征工程和大量的预处理步骤。相反,将原始微笑视频输入到端到端模型中,可以使这一过程更加自动化,但要考虑许多冗余的面部特征(超过地标位置),而这些特征主要与微笑准确性分类无关。目前尚不清楚如何以端到端方式从地标中建立区别性特征。我们提出了一个MeshSmileNet框架,一个转换器架构,以解决上述限制。为了消除冗余的面部特征,我们的地标输入是从一个预先训练好的地标检测器Attention Mesh中提取的。同样,为了发现判别特征,我们考虑了地标的相对性和轨迹。对于相对性,我们聚合了面部地标,这些地标在每一帧概念上形成曲线,以建立局部空间特征。对于轨迹,我们利用自注意机制来估计路标组成的特征随时间的运动,该机制捕获了对同一路标轨迹的成对依赖。这个想法使我们能够在UVA-NEMO, BBC, MMI面部表情和SPOS数据集上实现最先进的性能。
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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