Title
Handheld mobile photography in very low light
Abstract
Taking photographs in low light using a mobile phone is challenging and rarely produces pleasing results. Aside from the physical limits imposed by read noise and photon shot noise, these cameras are typically handheld, have small apertures and sensors, use mass-produced analog electronics that cannot easily be cooled, and are commonly used to photograph subjects that move, like children and pets. In this paper we describe a system for capturing clean, sharp, colorful photographs in light as low as 0.3 lux, where human vision becomes monochromatic and indistinct. To permit handheld photography without flash illumination, we capture, align, and combine multiple frames. Our system employs "motion metering", which uses an estimate of motion magnitudes (whether due to handshake or moving objects) to identify the number of frames and the per-frame exposure times that together minimize both noise and motion blur in a captured burst. We combine these frames using robust alignment and merging techniques that are specialized for high-noise imagery. To ensure accurate colors in such low light, we employ a learning-based auto white balancing algorithm. To prevent the photographs from looking like they were shot in daylight, we use tone mapping techniques inspired by illusionistic painting: increasing contrast, crushing shadows to black, and surrounding the scene with darkness. All of these processes are performed using the limited computational resources of a mobile device. Our system can be used by novice photographers to produce shareable pictures in a few seconds based on a single shutter press, even in environments so dim that humans cannot see clearly.
Year
DOI
Venue
2019
10.1145/3355089.3356508
ACM Transactions on Graphics (TOG)
Keywords
Field
DocType
computational photography, low-light imaging
Computer vision,Computational photography,Photography,Mobile device,Artificial intelligence,Mobile phone,Shot noise,Mathematics,Aside
Journal
Volume
Issue
ISSN
38
6
0730-0301
Citations 
PageRank 
References 
3
0.37
0
Authors
13
Name
Order
Citations
PageRank
Orly Liba131.05
Kiran Murthy230.37
Yun-Ta Tsai3467.12
Tim Brooks430.37
Tianfan Xue556622.16
Nikhil Karnad630.37
Qiurui He741.06
Jonathan T. Barron888139.55
Dillon Sharlet9261.63
Ryan Geiss1030.37
Samuel W. Hasinoff1135515.66
Yael Pritch12151.60
Marc Levoy13102731073.33