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Automatic Analysis of Naturalistic Hand-Over-Face Gestures

机译:自动分析自然的手势姿势

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One of the main factors that limit the accuracy of facial analysis systems is hand occlusion. As the face becomes occluded, facial features are lost, corrupted, or erroneously detected. Hand-over-face occlusions are considered not only very common but also very challenging to handle. However, there is empirical evidence that some of these hand-over-face gestures serve as cues for recognition of cognitive mental states. In this article, we present an analysis of automatic detection and classification of hand-over-face gestures. We detect hand-over-face occlusions and classify hand-over-face gesture descriptors in videos of natural expressions using multi-modal fusion of different state-of-the-art spatial and spatio-temporal features. We show experimentally that we can successfully detect face occlusions with an accuracy of 83%. We also demonstrate that we can classify gesture descriptors (hand shape, hand action, and facial region occluded) significantly better than a naive baseline. Our detailed quantitative analysis sheds some light on the challenges of automatic classification of hand-over-face gestures in natural expressions.
机译:限制面部分析系统准确性的主要因素之一是手遮挡。当面部被遮挡时,面部特征会丢失,损坏或错误检测。脸部遮挡不仅被认为非常普遍,而且处理起来也非常具有挑战性。但是,有经验证据表明,其中一些手势手势可作为识别认知心理状态的线索。在本文中,我们介绍了自动检测和分类手势手势的分析。我们使用不同状态的空间和时空特征的多模式融合,检测自然表情视频中的脸部遮挡并对其进行分类。我们通过实验表明,我们可以成功地检测出面部遮挡,准确度为83%。我们还证明,与单纯的基线相比,我们可以更好地对手势描述符(手的形状,手的动作和被遮挡的面部区域)进行分类。我们详细的定量分析为自然表情中的手势手势自动分类带来了挑战。

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