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Optical strain based recognition of subtle emotions

机译:基于光学应变的微妙情绪识别

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This paper presents a novel method to recognize subtle emotions based on optical strain magnitude feature extraction from the temporal point of view. The common way that subtle emotions are exhibited by a person is in the form of visually observed micro-expressions, which usually occur only over a brief period of time. Optical strain allows small deformations on the face to be computed between successive frames although these subtle changes can be minute. We perform temporal sum pooling for each frame in the video to a single strain map to summarize the features over time. To reduce the dimensionality of the input space, the strain maps are then resized to a pre-defined resolution for consistency across the database. Experiments were conducted on the SMIC (Spontaneous Micro-expression) Database, which was recently established in 2013. A best three-class recognition accuracy of 53.56% is achieved, with the proposed method outperforming the baseline reported in the original work by almost 5%. This is the first known optical strain based classification of micro-expressions. The closest related work employed optical strain to spot micro-expressions, but did not investigate its potential for determining the specific type of micro-expression.
机译:本文提出了一种从时间角度出发基于光学应变幅度特征提取的微妙情绪识别方法。人表现出微妙的情感的常见方式是通过视觉观察到的微表达形式,这种表达通常只发生在很短的一段时间内。光学应变允许在连续的帧之间计算出面部的微小变形,尽管这些细微的变化可能很小。我们将视频中的每个帧的时间总和池化为单个应变图,以汇总随时间变化的特征。为了减小输入空间的维数,然后将应变图的大小调整为预定义的分辨率,以确保整个数据库的一致性。在最近于2013年建立的SMIC(自发微表达)数据库上进行了实验。实现了三级识别的最佳准确度为53.56%,所提出的方法比原始工作中报告的基线高出将近​​5%。 。这是第一个已知的基于光学应变的微表达分类。最接近的相关工作是利用光学应变来发现微表达,但并未研究其确定微表达特定类型的潜力。

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