Low light image enhancement via sparse representations

Abstract

Abstract. Enhancing the quality of low light images is a critical pro-cessing function both from an aesthetics and an information extraction point of view. This work proposes a novel approach for enhancing images captured under low illumination conditions based on the mathematical framework of Sparse Representations. In our model, we utilize the sparse representation of low light image patches in an appropriate dictionary to approximate the corresponding day-time images. We consider two dictionaries; a night dictionary for low light conditions and a day dictio-nary for well illuminated conditions. To approximate the generation of low and high illumination image pairs, we generated the day dictionary from patches taken from well exposed images, while the night dictionary is created by extracting appropriate features from under exposed image patches. Experimental results suggest that the proposed scheme is able to accurately estimate a well illuminated image given a low-illumination ver-sion. The effectiveness of our system is evaluated by comparisons against ground truth images while compared to other methods for image night context enhancement, our system achieves better results both quantita-tively as well as qualitatively

Similar works

Full text

thumbnail-image

CiteSeerX

redirect
Last time updated on 29/10/2017

This paper was published in CiteSeerX.

Having an issue?

Is data on this page outdated, violates copyrights or anything else? Report the problem now and we will take corresponding actions after reviewing your request.