An adaptive convolutional neural network model for human facial expression recognition

Olena Arsirii, Denys Petrosiuk
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Abstract

The relevance of solving the problem of recognizing facial expressions in the image of a person's face for the formation of amodel of social interactions in the development of intelligent systems for computer vision, human-machine interaction, online learning, emotional marketing, and game intelligence is shown. The aim of the work is to reduce the training time and computational resources without losing the reliability of the multivalued classification of motor units for solving the problem of facial expression recognition in a human face image by developing an adaptive model of a convolution neural network and a method for its training with “fine tuning” of parameters. To achieve the goal, several tasks were solved in the work. Models of specialized convolution neural networks and pre-trained on the ImageNet set were investigated. The stages of transfer learning of convolution neural networks were shown. A model of a convolutionalneural network and a method for its training were developed to solve the problems of facial expression recognition on a human face image. The reliability of recognition of motor units was analyzed based on the developed adaptive model of a convolution neural network and the method of its transfer learning. It is shown that, on average, the use of the proposed loss function in a fully connected layer of a multi-valued motor unit classifier within the framework of the developed adaptive model of a convolution neural network based on the publicly available MobileNet-v1 and its transfer learning method made it possible to increase the reliability of solving the problem of facial expression recognition inahuman face image by 6 % by F1 value estimation.
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人脸表情识别的自适应卷积神经网络模型
在计算机视觉、人机交互、在线学习、情感营销和游戏智能等智能系统的开发中,解决人脸图像中的面部表情识别问题与社会互动模型形成的相关性。该工作的目的是通过开发卷积神经网络的自适应模型及其参数“微调”训练方法,在不失去运动单元多值分类的可靠性的情况下,减少训练时间和计算资源,以解决人脸图像中的面部表情识别问题。为了实现这一目标,在工作中解决了几个任务。研究了基于ImageNet集的专用卷积神经网络模型和预训练模型。给出了卷积神经网络迁移学习的各个阶段。提出了一种卷积神经网络模型及其训练方法,用于人脸图像的面部表情识别问题。基于建立的卷积神经网络自适应模型及其迁移学习方法,分析了运动单元识别的可靠性。结果表明,平均而言,在基于公开可用的MobileNet-v1及其迁移学习方法开发的卷积神经网络自适应模型框架内,在多值运动单元分类器的全连接层中使用所提出的损失函数,可以通过F1值估计将解决人脸图像中面部表情识别问题的可靠性提高6%。
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