Pseudo-labeling of transfer learning convolutional neural network data for human facial emotion recognition

Olena О. Arsirii, Denys V. Petrosiuk
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Abstract

The relevance of solving the problem of facial emotion recognition on human images in the creation of modern intelligent systems of computer vision and human-machine interaction, online learning and emotional marketing, health care and forensics, machine graphics and game intelligence is shown. Successful examples of technological solutions to the problem of facial emotion recognition using transfer learning of deep convolutional neural networks are shown. But the use of such popular datasets as DISFA, CelebA, AffectNet, for deep learning of convolutional neuralnetworks does not give good results in terms of the accuracy of emotion recognition, because almost all training sets have fundamental flaws related to errors in their creation, such as the lack of data of a certain class, imbalance of classes, subjectivity and ambiguity of labeling, insufficient amount of data for deep learning, etc. It is proposed to overcome the noted shortcomings of popular datasets for emotion recognition by adding to the training sample additional pseudo-labeled images with human emotions, on which recognition occurs with high accuracy. The aim of the research is to increase the accuracy of facial emotion recognitionon the image of a human by developing a pseudo-labeling method for transfer learning of a deep neural network. To achieve the aim, the following tasks were solved: a convolutional neural network model, previously trained on the ImageNet set using the transfer learning method, was adjusted on the RAF-DB data set to solve emotion recognition tasks; a pseudo-labeling method of the RAF−DB set data was developed for semi-supervised learning of a convolutional neural network model for the task of facial emotion recognition; the accuracy of facial emotion recognition was analyzed based on the developed convolutional neural network model and the method of pseudo-labeling of RAF-DB set data for its correction. It is shown that the use of the developed method of pseudo-labeling data and transfer learning of the MobileNet V1 convolutional neural network model allowed to increase the accuracy of facial emotion recognitionon the images of the RAF-DB dataset by 2 percent (from 76 to 78%) according to the F1 estimate. Atthe same time, taking into account the significant imbalance of the classes, for the 7 main emotions in the trainingset, we have a significant increase in the accuracy of recognizing a few representatives of such emotions as surprise (from 71 to 77%), fearful(from 64 to 69%), sad (from 72 to 76%), angrywith (from 64 to 74%), neutral(from 66 to 71%). The accuracy of recognizing the emotion of happy, which is the most common, decreased (from 91 to 86 %) Thus, it can be concluded that the use of the developed pseudo-labeling method gives good results in overcoming such shortcomings of datasets for deep learning of convolutional neural networks such as lack of data of a certain type, imbalance of classes, insufficient amount of data for deep learning, etc.
人脸情绪识别中迁移学习卷积神经网络数据的伪标记
在计算机视觉和人机交互、在线学习和情感营销、医疗保健和取证、机器图形学和游戏智能等现代智能系统的创建中,解决人类图像上的面部情感识别问题的相关性得到了展示。展示了使用深度卷积神经网络的迁移学习解决面部情绪识别问题的技术解决方案的成功示例。但是,使用DISFA、CelebA、AffectNet等流行的数据集进行卷积神经网络的深度学习,在情绪识别的准确性方面并没有得到很好的结果,因为几乎所有的训练集都存在与创建错误相关的根本性缺陷,例如某一类数据的缺乏、类的不平衡、标记的主观性和模糊性、深度学习的数据量不足等。本文提出通过在训练样本中添加带有人类情感的伪标记图像来克服当前流行的情感识别数据集的缺点,从而获得较高的识别准确率。研究的目的是通过开发一种用于深度神经网络迁移学习的伪标记方法来提高人脸情绪识别的准确性。为了实现这一目标,解决了以下任务:将先前使用迁移学习方法在ImageNet集上训练的卷积神经网络模型在RAF-DB数据集上进行调整以解决情绪识别任务;开发了一种基于RAF - DB数据集的伪标记方法,用于卷积神经网络模型的半监督学习,用于面部情绪识别任务;基于所建立的卷积神经网络模型和对RAF-DB集数据进行伪标记校正的方法,分析了人脸情绪识别的准确性。研究表明,根据F1估计,使用所开发的伪标记数据和MobileNet V1卷积神经网络模型的迁移学习方法,可以将RAF-DB数据集图像的面部情绪识别准确率提高2%(从76%提高到78%)。同时,考虑到类别的显著不平衡,对于训练集中的7种主要情绪,我们在识别诸如惊讶(从71%到77%),恐惧(从64%到69%),悲伤(从72%到76%),生气(从64%到74%),中性(从66%到71%)等情绪代表的准确性方面有了显着提高。识别最常见的快乐情绪的准确率下降(从91%下降到86%),因此可以得出结论,使用所开发的伪标记方法在克服卷积神经网络深度学习数据集的缺点方面取得了很好的效果,例如缺乏某类数据,类不平衡,深度学习数据量不足等。
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