1. Identity statement | |
Reference Type | Conference Paper (Conference Proceedings) |
Site | sibgrapi.sid.inpe.br |
Holder Code | ibi 8JMKD3MGPEW34M/46T9EHH |
Identifier | 8JMKD3MGPEW34M/43AH7MS |
Repository | sid.inpe.br/sibgrapi/2020/09.24.19.34 |
Last Update | 2020:10.01.16.55.58 (UTC) administrator |
Metadata Repository | sid.inpe.br/sibgrapi/2020/09.24.19.34.16 |
Metadata Last Update | 2022:06.14.00.00.06 (UTC) administrator |
DOI | 10.1109/SIBGRAPI51738.2020.00043 |
Citation Key | OliveiraPenaBert:2020:CoGrSe |
Title | A comparison of graph-based semi-supervised learning for data augmentation |
Format | On-line |
Year | 2020 |
Access Date | 2024, Sep. 16 |
Number of Files | 1 |
Size | 333 KiB |
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2. Context | |
Author | 1 Oliveira, Willian Dihanster G. de 2 Penatti, Otávio A. B. 3 Berton, Lilian |
Affiliation | 1 Federal University of Sao Paulo 2 Samsung R&D Institute 3 Federal University of Sao Paulo |
Editor | Musse, Soraia Raupp Cesar Junior, Roberto Marcondes Pelechano, Nuria Wang, Zhangyang (Atlas) |
e-Mail Address | lberton@unifesp.br |
Conference Name | Conference on Graphics, Patterns and Images, 33 (SIBGRAPI) |
Conference Location | Porto de Galinhas (virtual) |
Date | 7-10 Nov. 2020 |
Publisher | IEEE Computer Society |
Publisher City | Los Alamitos |
Book Title | Proceedings |
Tertiary Type | Full Paper |
History (UTC) | 2020-10-01 16:55:58 :: lberton@unifesp.br -> administrator :: 2020 2022-06-14 00:00:06 :: administrator -> lberton@unifesp.br :: 2020 |
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3. Content and structure | |
Is the master or a copy? | is the master |
Content Stage | completed |
Transferable | 1 |
Version Type | finaldraft |
Keywords | Image classification data augmentation image transformation GANs semi-supervised learning machine learning |
Abstract | In supervised learning, the algorithm accuracy usually improves with the size of the labeled dataset used for training the classifier. However, in many real-life scenarios, obtaining enough labeled data is costly or even not possible. In many circumstances, Data Augmentation (DA) techniques are usually employed, generating more labeled data for training machine learning algorithms. The common DA techniques are applied to already labeled data, generating simple variations of this data. For example, for image classification, image samples are rotated, cropped, flipped or other operators to generate variations of input image samples, and keeping their original labels. Other options are using Neural Networks algorithms that create new synthetic data or to employ Semi-supervised Learning (SSL) that label existing unlabeled data. In this paper, we perform a comparison among graph-based semi-supervised learning (GSSL) algorithms to augment the labeled dataset. The main advantage of using GSSL is that we can increase the training set by adding non-annotated images to the training set, therefore, we can benefit from the huge amount of unlabeled data available. Experiments are performed on five datasets for recognition of handwritten digits and letters (MNIST and EMINIST), animals (Dogs vs Cats), clothes (MNIST-Fashion) and remote sensing images (Brazilian Coffee Scenes), in which we compare different possibilities for DA, including the GSSL, Generative Adversarial Networks (GANs) and traditional Image Transformations (IT) applied on input labeled data. We also evaluated the impact of such techniques on different convolutional neural networks (CNN). Results indicate that, although all DA techniques performed well, GSSL was more robust to different image properties, presenting less accuracy variation across datasets. |
Arrangement 1 | urlib.net > SDLA > Fonds > SIBGRAPI 2020 > A comparison of... |
Arrangement 2 | urlib.net > SDLA > Fonds > Full Index > A comparison of... |
doc Directory Content | access |
source Directory Content | Sibgrapi2020_ID30.pdf | 24/09/2020 16:34 | 561.9 KiB | |
agreement Directory Content | |
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4. Conditions of access and use | |
data URL | http://urlib.net/ibi/8JMKD3MGPEW34M/43AH7MS |
zipped data URL | http://urlib.net/zip/8JMKD3MGPEW34M/43AH7MS |
Language | en |
Target File | sibgrapi2020_ID30.pdf |
User Group | lberton@unifesp.br |
Visibility | shown |
Update Permission | not transferred |
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5. Allied materials | |
Mirror Repository | sid.inpe.br/banon/2001/03.30.15.38.24 |
Next Higher Units | 8JMKD3MGPEW34M/43G4L9S 8JMKD3MGPEW34M/4742MCS |
Citing Item List | sid.inpe.br/sibgrapi/2020/10.28.20.46 24 sid.inpe.br/sibgrapi/2022/06.10.21.49 5 |
Host Collection | sid.inpe.br/banon/2001/03.30.15.38 |
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6. Notes | |
Empty Fields | archivingpolicy archivist area callnumber contenttype copyholder copyright creatorhistory descriptionlevel dissemination edition electronicmailaddress group isbn issn label lineage mark nextedition notes numberofvolumes orcid organization pages parameterlist parentrepositories previousedition previouslowerunit progress project readergroup readpermission resumeid rightsholder schedulinginformation secondarydate secondarykey secondarymark secondarytype serieseditor session shorttitle sponsor subject tertiarymark type url volume |
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7. Description control | |
e-Mail (login) | lberton@unifesp.br |
update | |
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