Probabilistic image colorization Conference Paper

Author(s): Royer, Amélie; Kolesnikov, Alexander; Lampert, Christoph H
Title: Probabilistic image colorization
Affiliation IST Austria
Abstract: We develop a probabilistic technique for colorizing grayscale natural images. In light of the intrinsic uncertainty of this task, the proposed probabilistic framework has numerous desirable properties. In particular, our model is able to produce multiple plausible and vivid colorizations for a given grayscale image and is one of the first colorization models to provide a proper stochastic sampling scheme. Moreover, our training procedure is supported by a rigorous theoretical framework that does not require any ad hoc heuristics and allows for efficient modeling and learning of the joint pixel color distribution.We demonstrate strong quantitative and qualitative experimental results on the CIFAR-10 dataset and the challenging ILSVRC 2012 dataset.
Conference Title: BMVC: British Machine Vision Conference
Conference Dates: September 4 - 7, 2017
Conference Location: London, UK
ISBN: 1-901725-39-1
Publisher: BMVA Press  
Date Published: 2017-09-01
Start Page: submitted
Open access: yes (repository)
IST Austria Authors
  1. Christoph Lampert
    87 Lampert
  2. Amélie Royer
    2 Royer