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Discriminative Spatiotemporal Local Binary Pattern with Revisited Integral Projection for Spontaneous Facial Micro-Expression Recognition

机译:具有自发性面部微表情识别的重新积分投影的时空局部二元模式。

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Recently, there have been increasing interests in inferring mirco-expression from facial image sequences. Due to subtle facial movement of micro-expressions, feature extraction has become an important and critical issue for spontaneous facial micro-expression recognition. Recent works used spatiotemporal local binary pattern (STLBP) for micro-expression recognition and considered dynamic texture information to represent face images. However, they miss the shape attribute of face images. On the other hand, they extract the spatiotemporal features from the global face regions while ignore the discriminative information between two micro-expression classes. The above-mentioned problems seriously limit the application of STLBP to micro-expression recognition. In this paper, we propose a discriminative spatiotemporal local binary pattern based on an integral projection to resolve the problems of STLBP for micro-expression recognition. First, we revisit an integral projection for preserving the shape attribute of micro-expressions by using robust principal component analysis. Furthermore, a revisited integral projection is incorporated with local binary pattern across spatial and temporal domains. Specifically, we extract the novel spatiotemporal features incorporating shape attributes into spatiotemporal texture features. For increasing the discrimination of micro-expressions, we propose a new feature selection based on Laplacian method to extract the discriminative information for facial micro-expression recognition. Intensive experiments are conducted on three availably published micro-expression databases including CASME, CASME2 and SMIC databases. We compare our method with the state-of-the-art algorithms. Experimental results demonstrate that our proposed method achieves promising performance for micro-expression recognition.
机译:近来,从面部图像序列推断微表达的兴趣日益浓厚。由于微表情的面部微妙运动,特征提取已成为自发的面部微表情识别的重要和关键问题。最近的工作使用时空局部二进制模式(STLBP)进行微表情识别,并考虑了动态纹理信息来表示人脸图像。但是,他们错过了脸部图像的形状属性。另一方面,他们从全局脸部区域中提取时空特征,而忽略了两个微表情类之间的区别信息。上述问题严重限制了STLBP在微表情识别中的应用。在本文中,我们提出了一种基于积分投影的判别时空局部二进制模式,以解决STLBP用于微表情识别的问题。首先,我们通过使用稳健的主成分分析来重新考虑用于保留微表达式的形状属性的整体投影。此外,再造的整体投影与跨空间和时间域的局部二进制模式结合在一起。具体来说,我们提取新颖的时空特征,将形状属性合并到时空纹理特征中。为了增加对微表情的识别,我们提出了一种基于拉普拉斯方法的新特征选择,以提取用于面部微表情识别的识别信息。在三个可用的微表达数据库(包括CASME,CASME2和SMIC数据库)上进行了密集实验。我们将我们的方法与最先进的算法进行比较。实验结果表明,我们提出的方法实现了微表达识别的有希望的性能。

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