Title
Imbalanced Classification via Feature Dictionary-Based Minority Oversampling
Abstract
Image classification research is one of the fields continuously studied in the computer vision domain, and several related studies have been actively conducted until recently. However, a limit exists regarding the prediction performance of real-world datasets due to the data imbalance problem between classes. Data augmentation through artificial sample generation for minority classes is one of the methods used to overcome this limitation. Among the various oversampling methods, we propose the feature dictionary-based generative model for the oversampling method. Feature dictionaries are built through the pretrained feature extractor, and the proposed generative model synthesizes artificial samples based on the dictionary. Class-to-class balanced training can be conducted by fine-tuning the classifier as additional data for the minority class. We experiment by applying the proposed framework to the fashion dataset, which has an extreme class imbalance. The experimental results demonstrate that the proposed model achieved the highest top-1 performance on various public fashion datasets. In addition, we analyze the number of samples in the dictionary and test the effectiveness of the elements that comprise the proposed model using various ablation studies.
Year
DOI
Venue
2022
10.1109/ACCESS.2022.3161510
IEEE ACCESS
Keywords
DocType
Volume
Feature extraction, Clothing, Dictionaries, Shape, Training, Generators, Predictive models, Deep learning, imbalanced classification, generative adversarial network
Journal
10
ISSN
Citations 
PageRank 
2169-3536
0
0.34
References 
Authors
0
3
Name
Order
Citations
PageRank
Minho r Park100.34
Hwa Jeon Song200.34
Dong-Oh Kang300.34