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Distribution-Preserving Data Augmentation

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Date

2021

Journal Title

Journal ISSN

Volume Title

Publisher

Peerj inc

Open Access Color

GOLD

Green Open Access

Yes

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Publicly Funded

No
Impulse
Top 10%
Influence
Average
Popularity
Top 10%

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Journal Issue

Abstract

In the last decade, deep learning has been applied in a wide range of problems with tremendous success. This success mainly comes from large data availability, increased computational power, and theoretical improvements in the training phase. As the dataset grows, the real world is better represented, making it possible to develop a model that can generalize. However, creating a labeled dataset is expensive, time-consuming, and sometimes not likely in some domains if not challenging. Therefore, researchers proposed data augmentation methods to increase dataset size and variety by creating variations of the existing data. For image data, variations can be obtained by applying color or spatial transformations, only one or a combination. Such color transformations perform some linear or nonlinear operations in the entire image or in the patches to create variations of the original image. The current color-based augmentation methods are usually based on image processing methods that apply color transformations such as equalizing, solarizing, and posterizing. Nevertheless, these color-based data augmentation methods do not guarantee to create plausible variations of the image. This paper proposes a novel distribution-preserving data augmentation method that creates plausible image variations by shifting pixel colors to another point in the image color distribution. We achieved this by defining a regularized density decreasing direction to create paths from the original pixels' color to the distribution tails. The proposed method provides superior performance compared to existing data augmentation methods which is shown using a transfer learning scenario on the UC Merced Land-use, Intel Image Classification, and Oxford-IIIT Pet datasets for classification and segmentation tasks.

Description

Nar, Fatih/0000-0002-3003-8136; Saran, Murat/0000-0002-8652-3392

Keywords

Machine Learning, Deep Learning, Data Augmentation, Color-Based Augmentation, Transfer Learning, Data augmentation, Artificial Intelligence, Electronic computers. Computer science, Machine learning, Deep learning, QA75.5-76.95, Color-based augmentation, Transfer learning

Fields of Science

03 medical and health sciences, 0302 clinical medicine, 0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology

Citation

Saran, Nurdan Ayşe; Saran, Murat; Nar, Fatih (2021). "Distribution-preserving data augmentation", Peerj Computer Science.

WoS Q

Q2

Scopus Q

Q1
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OpenCitations Citation Count
6

Source

PeerJ Computer Science

Volume

7

Issue

Start Page

1

End Page

25
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Citations

Scopus : 6

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Mendeley Readers : 17

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