H2-Stereo: High-Speed, High-Resolution Stereoscopic Video System
Ming Cheng, Yiling Xu, Wang Shen, M. Salman Asif, Chao Ma, Jun Sun,, Zhan Ma

TL;DR
H2-Stereo introduces a dual-camera system and a learned fusion network to produce high-speed, high-resolution stereoscopic videos, overcoming limitations of existing methods and enabling detailed 3D dynamic content capture.
Contribution
The paper presents a novel dual-camera setup combined with a learned fusion network for high spatiotemporal resolution stereoscopic videos, addressing previous spatial and temporal resolution trade-offs.
Findings
Outperforms state-of-the-art methods on synthetic and real data.
Effectively reconstructs high-quality 3D videos with large disparities.
Demonstrates robustness across various camera configurations and conditions.
Abstract
High-speed, high-resolution stereoscopic (H2-Stereo) video allows us to perceive dynamic 3D content at fine granularity. The acquisition of H2-Stereo video, however, remains challenging with commodity cameras. Existing spatial super-resolution or temporal frame interpolation methods provide compromised solutions that lack temporal or spatial details, respectively. To alleviate this problem, we propose a dual camera system, in which one camera captures high-spatial-resolution low-frame-rate (HSR-LFR) videos with rich spatial details, and the other captures low-spatial-resolution high-frame-rate (LSR-HFR) videos with smooth temporal details. We then devise a Learned Information Fusion network (LIFnet) that exploits the cross-camera redundancies to enhance both camera views to high spatiotemporal resolution (HSTR) for reconstructing the H2-Stereo video effectively. We utilize a disparity…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Advanced Vision and Imaging · Image Processing Techniques and Applications
