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CapsuleNet for Micro-Expression Recognition

机译:用于微表达识别的Capsulenet

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摘要

Facial micro-expression recognition has attracted researchers in terms of its objectiveness to reveal the true emotion of a person. However, the limited number of publicly available datasets on micro-expression and its low intensity of facial movements have posed a great challenge to training robust data-driven models for recognition task. In 2019, Facial Micro-Expression Grand Challenge combines three popular datasets, i.e. SMIC, CASME II, and SAMM into a single cross-database which requires the generalization of proposed method on a wider range of subject characteristics. In this paper, we propose a simple yet effective CapsuleNet for micro-expression recognition. The effectiveness of our proposed methods was evaluated on the cross-database micro-expression benchmark using the Leave-One-Object-Out cross-validation. The experiments show that our method achieved superiorly higher results than the baseline method (LBP-TOP) provided and other state-of-the-art CNN models.
机译:面部微表达识别在其目标方面吸引了研究人员,以揭示一个人的真实情感。然而,微表达上的公共可用数据集数量有限及其低强度的面部运动对训练识别任务的强大数据驱动模型产生了巨大的挑战。 2019年,面部微表达大挑战将三个流行的数据集,即SMIC,Casme II和SAMM集成到一个跨数据库中,需要在更广泛的受试者特征方面推广提出的方法。在本文中,我们为微表达识别提出了一个简单但有效的帽子。我们提出的方法的有效性在使用休假 - 一对象交叉验证对跨数据库微表达基准进行评估。实验表明,我们的方法达到了比所提供的基线方法(LBP-TOP)和其他最先进的CNN模型的结果更高。

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