Instance Data Condensation for Image Super-Resolution
Tianhao Peng, Ho Man Kwan, Yuxuan Jiang, Ge Gao, Fan Zhang, Xiaozhong Xu, Shan Liu, David Bull

TL;DR
This paper introduces a novel Instance Data Condensation framework tailored for Image Super-Resolution, enabling significant data reduction while maintaining high model performance and training stability.
Contribution
The paper presents a new per-image data condensation method for ISR using Fourier features and feature distribution matching, achieving effective dataset condensation at a 10% rate.
Findings
Condensed dataset achieves comparable performance to full dataset.
Synthetic dataset demonstrates excellent training stability.
First to show high-quality synthetic dataset with only 10% data volume.
Abstract
Deep learning based Image Super-Resolution (ISR) relies on large training datasets to optimize model generalization; this requires substantial computational and storage resources during training. While dataset condensation (DC) has shown potential in improving data efficiency for high-level computer vision tasks, adopting these methods for ISR is not straightforward due to the different requirements of ISR training, including the use of unlabeled datasets and high resolution images with fine details. In this paper, we propose a novel Instance Data Condensation (IDC) framework specifically for ISR, which achieves data condensation in a per-image manner, aiming to address the limitations when directly applying existing DC methods to the ISR task. Furthermore, the IDC framework is based on a novel Random Local Fourier Feature Extraction and Multi-level Feature Distribution Matching…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Advanced Vision and Imaging · Image Processing Techniques and Applications
