基于薄板样条和相对AU约束的细粒度微表达式生成

Sirui Zhao, Shukang Yin, Huaying Tang, Rijin Jin, Yifan Xu, Tong Xu, Enhong Chen
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引用次数: 3

摘要

微表情(micro-expression, ME)是一种典型的心理应激反应,通常会在人的脸上迅速泄露出来,可以揭示真实的感受和情绪认知。因此,自动ME分析(MEA)在安全、临床等领域有着重要的应用。然而,缺乏足够的环境效应数据严重阻碍了环境效应研究。为了克服这一困境,并受到当前图像生成技术的鼓励,本文提出了一种细粒度的ME生成方法,以增强ME数据的数据量和多样性。具体来说,我们首先使用具有密集运动网络的薄板样条变换来估计非线性ME运动。然后,将估计的ME运动变换(包括光流和遮挡掩模)发送到生成网络,合成目标面部微表情。特别是,我们获得源ME与目标面部的相对动作单位(au)作为约束,以鼓励网络忽略与表情无关的运动,从而生成细粒度的ME。通过在CASME II、SMIC和SAMM数据集上的对比实验,验证了该方法的有效性和优越性。源代码在https://github.com/MEA-LAB-421/MEGC2022-Generation中提供。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fine-grained Micro-Expression Generation based on Thin-Plate Spline and Relative AU Constraint
As a typical psychological stress reaction, micro-expression (ME) is usually quickly leaked on a human face and can reveal the true feeling and emotional cognition. Therefore,automatic ME analysis (MEA) has essential applications in safety, clinical and other fields. However, the lack of adequate ME data has severely hindered MEA research. To overcome this dilemma and encouraged by current image generation techniques, this paper proposes a fine-grained ME generation method to enhance ME data in terms of data volume and diversity. Specifically, we first estimate non-linear ME motion using thin-plate spline transformation with a dense motion network. Then, the estimated ME motion transformations, including optical flow and occlusion masks, are sent to the generation network to synthesize the target facial micro-expression. In particular, we obtain the relative action units (AUs) of the source ME to the target face as a constraint to encourage the network to ignore expression-irrelevant movements, thereby generating fine-grained MEs. Through comparative experiments on CASME II, SMIC and SAMM datasets, we demonstrate the effectiveness and superiority of our method. Source code is provided in https://github.com/MEA-LAB-421/MEGC2022-Generation.
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