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Main Authors: Zheng, Yuhang, Wang, Zhen, Chen, Long
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2401.15646
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author Zheng, Yuhang
Wang, Zhen
Chen, Long
author_facet Zheng, Yuhang
Wang, Zhen
Chen, Long
contents Being widely used in learning unbiased visual question answering (VQA) models, Data Augmentation (DA) helps mitigate language biases by generating extra training samples beyond the original samples. While today's DA methods can generate robust samples, the augmented training set, significantly larger than the original dataset, often exhibits redundancy in terms of difficulty or content repetition, leading to inefficient model training and even compromising the model performance. To this end, we design an Effective Curriculum Learning strategy ECL to enhance DA-based VQA methods. Intuitively, ECL trains VQA models on relatively ``easy'' samples first, and then gradually changes to ``harder'' samples, and less-valuable samples are dynamically removed. Compared to training on the entire augmented dataset, our ECL strategy can further enhance VQA models' performance with fewer training samples. Extensive ablations have demonstrated the effectiveness of ECL on various methods.
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publishDate 2024
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spellingShingle Improving Data Augmentation for Robust Visual Question Answering with Effective Curriculum Learning
Zheng, Yuhang
Wang, Zhen
Chen, Long
Computer Vision and Pattern Recognition
Being widely used in learning unbiased visual question answering (VQA) models, Data Augmentation (DA) helps mitigate language biases by generating extra training samples beyond the original samples. While today's DA methods can generate robust samples, the augmented training set, significantly larger than the original dataset, often exhibits redundancy in terms of difficulty or content repetition, leading to inefficient model training and even compromising the model performance. To this end, we design an Effective Curriculum Learning strategy ECL to enhance DA-based VQA methods. Intuitively, ECL trains VQA models on relatively ``easy'' samples first, and then gradually changes to ``harder'' samples, and less-valuable samples are dynamically removed. Compared to training on the entire augmented dataset, our ECL strategy can further enhance VQA models' performance with fewer training samples. Extensive ablations have demonstrated the effectiveness of ECL on various methods.
title Improving Data Augmentation for Robust Visual Question Answering with Effective Curriculum Learning
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2401.15646