Smartphone cameras today are increasingly approaching the versatility and quality of professional cameras through a combination of hardware and software advancements. However, fixed aperture remains a key limitation, preventing users from controlling the depth of field (DoF) of captured images. At the same time, many smartphones now have multiple cameras with different fixed apertures -- specifically, an ultra-wide camera with wider field of view and deeper DoF and a higher resolution primary camera with shallower DoF. In this work, we propose DC2, a system for defocus control for synthetically varying camera aperture, focus distance and arbitrary defocus effects by fusing information from such a dual-camera system. Our key insight is to leverage real-world smartphone camera dataset by using image refocus as a proxy task for learning to control defocus. Quantitative and qualitative evaluations on real-world data demonstrate our system's efficacy where we outperform state-of-the-art on defocus deblurring, bokeh rendering, and image refocus. Finally, we demonstrate creative post-capture defocus control enabled by our method, including tilt-shift and content-based defocus effects.
@article{arxiv.2304.03285,
title = {$\text{DC}^2$: Dual-Camera Defocus Control by Learning to Refocus},
author = {Hadi Alzayer and Abdullah Abuolaim and Leung Chun Chan and Yang Yang and Ying Chen Lou and Jia-Bin Huang and Abhishek Kar},
journal= {arXiv preprint arXiv:2304.03285},
year = {2023}
}
Comments
CVPR 2023. See the project page at https://defocus-control.github.io