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Expression recognition with deep features extracted from holistic and part-based models

机译:从整体和基于部分模型中提取的深度特征的表达识别

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Facial expression recognition aims to accurately interpret facial muscle movements in affective states (emotions). Previous studies have proposed holistic analysis of the face, as well as the extraction of features pertained only to specific facial regions towards expression recognition. While classically the latter have shown better performances, we here explore this in the context of deep learning. In particular, this work provides a performance comparison of holistic and part-based deep learning models for expression recognition. In addition, we showcase the effectiveness of skip connections, which allow a network to infer from both low and high-level feature maps. Our results suggest that holistic models outperform part-based models, in the absence of skip connections. Finally, based on our findings, we propose a data augmentation scheme, which we incorporate in a part-based model. The proposed multi-face multi-part (MFMP) model leverages the wide information from part-based data augmentation, where we train the network using the facial parts extracted from different face samples of the same expression class. Extensive experiments on publicly available datasets show a significant improvement of facial expression classification with the proposed MFMP framework. (C) 2020 Published by Elsevier B.V.
机译:面部表情识别旨在准确地解释情感状态(情绪)的面部肌肉运动。以前的研究提出了对面部的整体分析,以及提取仅针对特定面部区域朝向表达识别的特征。虽然典型地,后者表现出更好的表现,我们在这里探索了深入学习的背景下。特别是,这项工作提供了对表达识别的整体和部分深层学习模型的性能比较。此外,我们展示了跳过连接的有效性,这允许网络从低级别和高级特征映射推断出来。我们的结果表明,在没有跳过连接的情况下,整体模型始于基于部分的模型。最后,根据我们的研究结果,我们提出了一种数据增强方案,我们将其纳入基于零件的模型。所提出的多面多部分(MFMP)模型利用了基于零件的数据增强的广泛信息,其中我们使用来自相同表达式类的不同面积中提取的面部部件训练网络。对公开数据集的广泛实验显示了拟议的MFMP框架对面部表情分类的显着提高。 (c)2020由elsevier b.v发布。

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