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A Comprehensive Survey on Data Augmentation

Authors :
Wang, Zaitian
Wang, Pengfei
Liu, Kunpeng
Wang, Pengyang
Fu, Yanjie
Lu, Chang-Tien
Aggarwal, Charu C.
Pei, Jian
Zhou, Yuanchun
Publication Year :
2024

Abstract

Data augmentation is a series of techniques that generate high-quality artificial data by manipulating existing data samples. By leveraging data augmentation techniques, AI models can achieve significantly improved applicability in tasks involving scarce or imbalanced datasets, thereby substantially enhancing AI models' generalization capabilities. Existing literature surveys only focus on a certain type of specific modality data, and categorize these methods from modality-specific and operation-centric perspectives, which lacks a consistent summary of data augmentation methods across multiple modalities and limits the comprehension of how existing data samples serve the data augmentation process. To bridge this gap, we propose a more enlightening taxonomy that encompasses data augmentation techniques for different common data modalities. Specifically, from a data-centric perspective, this survey proposes a modality-independent taxonomy by investigating how to take advantage of the intrinsic relationship between data samples, including single-wise, pair-wise, and population-wise sample data augmentation methods. Additionally, we categorize data augmentation methods across five data modalities through a unified inductive approach.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2405.09591
Document Type :
Working Paper