A study of CNN transfer learning for image processing
Transfer learning, a domain of machine learning, seeks to be an efficient solution over traditional machine learning techniques by adapting existing convolutional neural networks (CNN) to suit a new problem. Adapting a CNN for transfer learning can be done through the changing of hyperparameters and...
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sg-ntu-dr.10356-1450392023-07-07T18:13:11Z A study of CNN transfer learning for image processing Koh, Yee Zuo Kai-Kuang Ma School of Electrical and Electronic Engineering EKKMA@ntu.edu.sg Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision Transfer learning, a domain of machine learning, seeks to be an efficient solution over traditional machine learning techniques by adapting existing convolutional neural networks (CNN) to suit a new problem. Adapting a CNN for transfer learning can be done through the changing of hyperparameters and the freezing of CNN’s layers. In this paper, transfer learning was implemented to VGG-Face, a state-of-the-art facial recognition CNN, where it was adapted to understand and classify images from the JAFFE dataset consisting of four different human facial emotions: (1) Angry, (2) Happy, (3) Sad, (4) Surprised. A cascade transfer learning was performed using the FER2013 dataset for the first fine- tune and a portion of the Japanese Female Facial Expression (JAFFE) dataset for the second fine-tune. The test accuracy was then taken using a portion of the JAFFE dataset. The changing of hyperparameters and the freezing of the CNN’s layers within the VGG- Face CNN were also discussed in this paper. The experiments were ran using a NVIDIA RTX 2060 GPU on MATLAB R2020a using its various toolboxes. The final architecture proposed a validation accuracy of 62.41% on the FER2013 dataset, and a test accuracy 86.11% on the JAFFE test dataset, which was an increase compared to the baseline of 20.63% and 27.78% respectively. Bachelor of Engineering (Information Engineering and Media) 2020-12-09T05:32:05Z 2020-12-09T05:32:05Z 2020 Final Year Project (FYP) https://hdl.handle.net/10356/145039 en A3331-192 application/pdf Nanyang Technological University |
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Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision Koh, Yee Zuo A study of CNN transfer learning for image processing |
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Transfer learning, a domain of machine learning, seeks to be an efficient solution over traditional machine learning techniques by adapting existing convolutional neural networks (CNN) to suit a new problem. Adapting a CNN for transfer learning can be done through the changing of hyperparameters and the freezing of CNN’s layers.
In this paper, transfer learning was implemented to VGG-Face, a state-of-the-art facial recognition CNN, where it was adapted to understand and classify images from the JAFFE dataset consisting of four different human facial emotions: (1) Angry, (2) Happy, (3) Sad, (4) Surprised.
A cascade transfer learning was performed using the FER2013 dataset for the first fine- tune and a portion of the Japanese Female Facial Expression (JAFFE) dataset for the second fine-tune. The test accuracy was then taken using a portion of the JAFFE dataset. The changing of hyperparameters and the freezing of the CNN’s layers within the VGG- Face CNN were also discussed in this paper. The experiments were ran using a NVIDIA RTX 2060 GPU on MATLAB R2020a using its various toolboxes.
The final architecture proposed a validation accuracy of 62.41% on the FER2013 dataset, and a test accuracy 86.11% on the JAFFE test dataset, which was an increase compared to the baseline of 20.63% and 27.78% respectively. |
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Kai-Kuang Ma |
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Kai-Kuang Ma Koh, Yee Zuo |
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Final Year Project |
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Koh, Yee Zuo |
author_sort |
Koh, Yee Zuo |
title |
A study of CNN transfer learning for image processing |
title_short |
A study of CNN transfer learning for image processing |
title_full |
A study of CNN transfer learning for image processing |
title_fullStr |
A study of CNN transfer learning for image processing |
title_full_unstemmed |
A study of CNN transfer learning for image processing |
title_sort |
study of cnn transfer learning for image processing |
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Nanyang Technological University |
publishDate |
2020 |
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https://hdl.handle.net/10356/145039 |
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1772828272723230720 |