2023
DOI: 10.15276/hait.06.2023.13
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Pseudo-labeling of transfer learning convolutional neural network data for human facial emotion recognition

Olena О. Arsirii,
Denys V. Petrosiuk

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 popu… Show more

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“…Pre-training of neural networks consists of extracting information from previous data before the start of the main stage of training. This makes it possible to start training the model on target data using a pre-trained model instead of a model with random parameters, which allows you to accelerate the convergence of the neural network model, increases its performance even on datasets of limited volume [11,12].…”
Section: Literature Reviewmentioning
confidence: 99%
“…Pre-training of neural networks consists of extracting information from previous data before the start of the main stage of training. This makes it possible to start training the model on target data using a pre-trained model instead of a model with random parameters, which allows you to accelerate the convergence of the neural network model, increases its performance even on datasets of limited volume [11,12].…”
Section: Literature Reviewmentioning
confidence: 99%