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Large Kernel Frequency-enhanced Network for Efficient Single Image Super-Resolution | IEEE Conference Publication | IEEE Xplore

Large Kernel Frequency-enhanced Network for Efficient Single Image Super-Resolution


Abstract:

In recent years, there has been significant progress in efficient and lightweight image super-resolution, due in part to the design of several powerful and lightweight at...Show More

Abstract:

In recent years, there has been significant progress in efficient and lightweight image super-resolution, due in part to the design of several powerful and lightweight attention mechanisms that enhance model representation ability. However, the attention maps of most methods are obtained directly from the spatial domain, limiting their upper bound due to the locality of spatial convolutions and limited receptive fields. In this paper, we shift focus to the frequency domain, since the natural global properties of the frequency domain can address this issue. To explore attention maps from the frequency domain perspective, we investigate and correct some misconceptions in existing frequency domain feature processing methods and propose a new frequency domain attention mechanism called frequency-enhanced pixel attention (FPA). Additionally, we use large kernel convolutions and partial convolutions to improve the ability to extract deep features while maintaining a lightweight design. On the basis of these improvements, we propose a large kernel frequency-enhanced network (LKFN) with smaller model size and higher computational efficiency. It can effectively capture long-range dependencies between pixels in a whole image and achieve state-of-the-art performance in existing efficient super-resolution methods.
Date of Conference: 17-18 June 2024
Date Added to IEEE Xplore: 27 September 2024
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Conference Location: Seattle, WA, USA
Citations are not available for this document.

1. Introduction

As a low-level computer vision task, single-image super-resolution (SISR) aims to reconstruct a high resolution (HR) image from its low resolution (LR) counterpart. Since SR-CNN [9] introduced deep learning to super-resolution for the first time, there has been a significant surge in the development of deep-learning-based SR models. By leveraging large amounts of data and powerful computing resources, deep learning has enabled researchers to develop increasingly sophisticated SR models that can generate high quality image from low-resolution inputs. Despite their impressive results, due to their high complexity and computational cost, traditional super-resolution networks are often difficult to use in practical applications. In this context, efficient super-resolution (ESR) networks with greatly reduced parameters and less computational complexity are gradually being introduced and developed.

Cites in Papers - |

Cites in Papers - IEEE (3)

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1.
Shangwang Liu, Yinghai Lin, Danyang Liu, Peixia Wang, Bingyan Zhou, Feiyan Si, "Frequency-Enhanced Lightweight Vision Mamba Network for Medical Image Segmentation", IEEE Transactions on Instrumentation and Measurement, vol.74, pp.1-12, 2025.
2.
Xiaojing Liu, Yuxin Zhang, Xuejun Wang, "A Multi-scale Attention Network Based on Dilated Convolution for Image Super-Resolution", 2024 7th International Conference on Computer Information Science and Application Technology (CISAT), pp.552-556, 2024.
3.
Bin Ren, Yawei Li, Nancy Mehta, Radu Timofte, Hongyuan Yu, Cheng Wan, Yuxin Hong, Bingnan Han, Zhuoyuan Wu, Yajun Zou, Yuqing Liu, Jizhe Li, Keji He, Chao Fan, Heng Zhang, Xiaolin Zhang, Xuanwu Yin, Kunlong Zuo, Bohao Liao, Peizhe Xia, Long Peng, Zhibo Du, Xin Di, Wangkai Li, Yang Wang, Wei Zhai, Renjing Pei, Jiaming Guo, Songcen Xu, Yang Cao, Zhengjun Zha, Yan Wang, Yi Liu, Qing Wang, Gang Zhang, Liou Zhang, Shijie Zhao, Long Sun, Jinshan Pan, Jiangxin Dong, Jinhui Tang, Xin Liu, Min Yan, Qian Wang, Menghan Zhou, Yiqiang Yan, Yixuan Liu, Wensong Chan, Dehua Tang, Dong Zhou, Li Wang, Lu Tian, Barsoum Emad, Bohan Jia, Junbo Qiao, Yunshuai Zhou, Yun Zhang, Wei Li, Shaohui Lin, Shenglong Zhou, Binbin Chen, Jincheng Liao, Suiyi Zhao, Zhao Zhang, Bo Wang, Yan Luo, Yanyan Wei, Feng Li, Mingshen Wang, Yawei Li, Jinhan Guan, Dehua Hu, Jiawei Yu, Qisheng Xu, Tao Sun, Long Lan, Kele Xu, Xin Lin, Jingtong Yue, Lehan Yang, Shiyi Du, Lu Qi, Chao Ren, Zeyu Han, Yuhan Wang, Chaolin Chen, Haobo Li, Mingjun Zheng, Zhongbao Yang, Lianhong Song, Xingzhuo Yan, Minghan Fu, Jingyi Zhang, Baiang Li, Qi Zhu, Xiaogang Xu, Dan Guo, Chunle Guo, Jiadi Chen, Huanhuan Long, Chunjiang Duanmu, Xiaoyan Lei, Jie Liu, Weilin Jia, Weifeng Cao, Wenlong Zhang, Yanyu Mao, Ruilong Guo, Nihao Zhang, Qian Wang, Manoj Pandey, Maksym Chernozhukov, Giang Le, Shuli Cheng, Hongyuan Wang, Ziyan Wei, Qingting Tang, Liejun Wang, Yongming Li, Yanhui Guo, Hao Xu, Akram Khatami-Rizi, Ahmad Mahmoudi-Aznaveh, Chih-Chung Hsu, Chia-Ming Lee, Yi-Shiuan Chou, Amogh Joshi, Nikhil Akalwadi, Sampada Malagi, Palani Yashaswini, Chaitra Desai, Ramesh Ashok Tabib, Ujwala Patil, Uma Mudenagudi, "The Ninth NTIRE 2024 Efficient Super-Resolution Challenge Report", 2024 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops (CVPRW), pp.6595-6631, 2024.
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