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From Macro to Micro Expression Recognition: Deep Learning on Small Datasets Using Transfer Learning

机译:从宏观到微观表达识别:使用转移学习对小数据集进行深度学习

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摘要

This paper presents the methods used in our submission to 2018 Facial Micro-Expression Grand Challenge (MEGC). The object of the challenge is to recognize micro-expression in two provided databases, including holdout-database recognition and composite database recognition. Considering the small size of the databases, we follow a rout of transfer learning to implement convolutional neural network to recognize the micro-expression. ResNet10 pre-trained on ImageNet dataset was fine-tuned on macro-expression datasets with large size and then on the provided micro-expression datasets. Experimental results show that the method can achieve weighted average recall (WAR) of 0.561 and unweighted average recall (UAR) of 0.389 in Holdout-database Evaluation Task, and F1 Score of 0.64 in Composite Database Evaluation Task, which are much higher than what baseline methods (LBP-TOP, HOOF, HOG3D) can achieve.
机译:本文介绍了我们提交给2018面部微表情大挑战(MEGC)的方法。挑战的目标是识别两个提供的数据库中的微表达,包括保持数据库识别和复合数据库识别。考虑到数据库的规模很小,我们遵循大量的迁移学习来实现卷积神经网络来识别微表达式。在ImageNet数据集上预先训练的ResNet10在大尺寸的宏表达式数据集上然后在提供的微表达数据集上进行了微调。实验结果表明,该方法在Holdout数据库评估任务中的加权平均召回率(WAR)为0.561,未加权平均召回率(UAR)为0.389,在Composite Database Evaluation Task中的F1得分为0.64,远高于基线方法(LBP-TOP,HOOF,HOG3D)可以实现。

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