Logo image
A Lightweight Dual-Dimensional Interactive Parallax Attention Network for Stereo Image Super-Resolution
Book chapter

A Lightweight Dual-Dimensional Interactive Parallax Attention Network for Stereo Image Super-Resolution

Wenjie Wang, Jianwei Zhao, Peijun Zheng, Zhenghua Zhou and Hai Wang
Proceedings of the First International Conference on Advanced Robotics, Control, and Artificial Intelligence, pp.411-423
Lecture Notes in Networks and Systems, 1376, Springer Nature Singapore
2025

Abstract

Dual-dimensional interaction Lightweight network Omni-scale aggregation group Parallax attention Stereo super-resolution
Stereo image Super-Resolution (StereoSR) aims to reconstruct a high-resolution image from the low-resolution stereo image pairs by taking full advantage of the complementary information between the left and right views of stereo images. Although existing StereoSR methods have achieved good performances, they have not utilized the information from intra-view and cross-view fully yet and face the huge network’s parameters. In order to address the above problems, a disparate lightweight attention-based fusion network, called Dual-dimensional Interactive Parallax Attention network (DIPAnet), is proposed in this paper. Our proposed network designs an effective Dual-dimensional Interactive Parallax Attention Module (DIPAM) that employs a Spatial Channel Fusion Module (SCFM) to obtain the complementary information from the aspect of spatial dimension and the channel dimension. In the meanwhile, some lightweight Omni-Scale Aggregation Groups (OSAGs) are applied to constitute the backbone of the main network for extracting the intra-view features. Extensive comparison experiments and ablation study illustrate that our proposed DIPAnet can achieve competitive results and outperforms some state-of-the-art StereoSR methods.

Details

Metrics

12 Record Views
Logo image