Style Transfer for Data Augmentation in Convolutional Neural Networks Applied to Fire Detection

Adequate training data is essential in all supervised learning methods, including deep learning and machine vision. One of the approaches used to increase the number of training examples in deep learning is the "data augmentation" method. This method involves rotation transformation, trans...

Full description

Bibliographic Details
Main Author: Mahmod Amintoosi
Format: Article
Language:English
Published: University of Isfahan 2022-12-01
Series:هوش محاسباتی در مهندسی برق
Subjects:
Online Access:https://isee.ui.ac.ir/article_26042_9f708a69b0d193c2df057cdcb993c1ff.pdf
_version_ 1797807007342788608
author Mahmod Amintoosi
author_facet Mahmod Amintoosi
author_sort Mahmod Amintoosi
collection DOAJ
description Adequate training data is essential in all supervised learning methods, including deep learning and machine vision. One of the approaches used to increase the number of training examples in deep learning is the "data augmentation" method. This method involves rotation transformation, transitions, and cropping on training images, which leads to an increase in the number of samples, which are different from training data. In this paper, the "style transfer" algorithm is used to increase the number of training samples. The goal in style transfer is to apply the appearance or visual style of one image to another image. In this paper, this method is used to produce new training examples and as an application, the proposed method is applied to the problem of fire detection. Assuming that the training images recorded during the night are less than the samples taken during the day, by applying a style transfer method, the images of the day are converted into night images and added to the data set as training data. The test results show the efficiency of the proposed data augmentation method. On average, the correct detection rate has increased by 7%.
first_indexed 2024-03-13T06:16:02Z
format Article
id doaj.art-e0bf0dcb860b48e98174d9d0da500f20
institution Directory Open Access Journal
issn 2821-0689
language English
last_indexed 2024-03-13T06:16:02Z
publishDate 2022-12-01
publisher University of Isfahan
record_format Article
series هوش محاسباتی در مهندسی برق
spelling doaj.art-e0bf0dcb860b48e98174d9d0da500f202023-06-11T04:22:15ZengUniversity of Isfahanهوش محاسباتی در مهندسی برق2821-06892022-12-011349711410.22108/isee.2021.124044.149026042Style Transfer for Data Augmentation in Convolutional Neural Networks Applied to Fire DetectionMahmod Amintoosi0Dept. of Computer Science, Faculty of Mathematics and Computer Science, Hakim Sabzevari University, Sabzevar, IranAdequate training data is essential in all supervised learning methods, including deep learning and machine vision. One of the approaches used to increase the number of training examples in deep learning is the "data augmentation" method. This method involves rotation transformation, transitions, and cropping on training images, which leads to an increase in the number of samples, which are different from training data. In this paper, the "style transfer" algorithm is used to increase the number of training samples. The goal in style transfer is to apply the appearance or visual style of one image to another image. In this paper, this method is used to produce new training examples and as an application, the proposed method is applied to the problem of fire detection. Assuming that the training images recorded during the night are less than the samples taken during the day, by applying a style transfer method, the images of the day are converted into night images and added to the data set as training data. The test results show the efficiency of the proposed data augmentation method. On average, the correct detection rate has increased by 7%.https://isee.ui.ac.ir/article_26042_9f708a69b0d193c2df057cdcb993c1ff.pdfstyle transferdata augmentationdeep learningfire detectiongenerative adversarial networks
spellingShingle Mahmod Amintoosi
Style Transfer for Data Augmentation in Convolutional Neural Networks Applied to Fire Detection
هوش محاسباتی در مهندسی برق
style transfer
data augmentation
deep learning
fire detection
generative adversarial networks
title Style Transfer for Data Augmentation in Convolutional Neural Networks Applied to Fire Detection
title_full Style Transfer for Data Augmentation in Convolutional Neural Networks Applied to Fire Detection
title_fullStr Style Transfer for Data Augmentation in Convolutional Neural Networks Applied to Fire Detection
title_full_unstemmed Style Transfer for Data Augmentation in Convolutional Neural Networks Applied to Fire Detection
title_short Style Transfer for Data Augmentation in Convolutional Neural Networks Applied to Fire Detection
title_sort style transfer for data augmentation in convolutional neural networks applied to fire detection
topic style transfer
data augmentation
deep learning
fire detection
generative adversarial networks
url https://isee.ui.ac.ir/article_26042_9f708a69b0d193c2df057cdcb993c1ff.pdf
work_keys_str_mv AT mahmodamintoosi styletransferfordataaugmentationinconvolutionalneuralnetworksappliedtofiredetection