Data augmentation for improving few-shot learning on ResNet50

With the onset of rapid climate change and declining biodiversity, forest recovery management is becoming increasingly important. Tree inventory keeping and species identification are two necessary aspects to this, which can be very labour intensive. To alleviate this, a way to automate these tasks...

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主要作者: Chan, Jia Ler
其他作者: Ji-Jon Sit
格式: Final Year Project
語言:English
出版: Nanyang Technological University 2024
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在線閱讀:https://hdl.handle.net/10356/176270
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spelling sg-ntu-dr.10356-1762702024-05-17T15:44:59Z Data augmentation for improving few-shot learning on ResNet50 Chan, Jia Ler Ji-Jon Sit School of Electrical and Electronic Engineering jijon@ntu.edu.sg Engineering Electrical and electronic engineering With the onset of rapid climate change and declining biodiversity, forest recovery management is becoming increasingly important. Tree inventory keeping and species identification are two necessary aspects to this, which can be very labour intensive. To alleviate this, a way to automate these tasks using machine learning models can be very helpful. However, due to the nature of how tree data is captured, there is very little usable data to train an image learning model, leading to very low classification accuracy. Because of this, finding a few-shot learning method that can yield high accuracies is of utmost importance. Data augmentation is a machine learning technique that can help in cases where data is scarce. In the case of image-based learning, small modifications would be made to the image, presenting a wider array of variations of the data during training and can help the model to generalise better. Bachelor's degree 2024-05-15T05:37:19Z 2024-05-15T05:37:19Z 2024 Final Year Project (FYP) Chan, J. L. (2024). Data augmentation for improving few-shot learning on ResNet50. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/176270 https://hdl.handle.net/10356/176270 en A2088-231 application/pdf Nanyang Technological University
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering
Electrical and electronic engineering
spellingShingle Engineering
Electrical and electronic engineering
Chan, Jia Ler
Data augmentation for improving few-shot learning on ResNet50
description With the onset of rapid climate change and declining biodiversity, forest recovery management is becoming increasingly important. Tree inventory keeping and species identification are two necessary aspects to this, which can be very labour intensive. To alleviate this, a way to automate these tasks using machine learning models can be very helpful. However, due to the nature of how tree data is captured, there is very little usable data to train an image learning model, leading to very low classification accuracy. Because of this, finding a few-shot learning method that can yield high accuracies is of utmost importance. Data augmentation is a machine learning technique that can help in cases where data is scarce. In the case of image-based learning, small modifications would be made to the image, presenting a wider array of variations of the data during training and can help the model to generalise better.
author2 Ji-Jon Sit
author_facet Ji-Jon Sit
Chan, Jia Ler
format Final Year Project
author Chan, Jia Ler
author_sort Chan, Jia Ler
title Data augmentation for improving few-shot learning on ResNet50
title_short Data augmentation for improving few-shot learning on ResNet50
title_full Data augmentation for improving few-shot learning on ResNet50
title_fullStr Data augmentation for improving few-shot learning on ResNet50
title_full_unstemmed Data augmentation for improving few-shot learning on ResNet50
title_sort data augmentation for improving few-shot learning on resnet50
publisher Nanyang Technological University
publishDate 2024
url https://hdl.handle.net/10356/176270
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