Loading…

Contrast enhancement by multi-level histogram shape segmentation with adaptive detail enhancement for noise suppression

The usual problems associated with image enhancement include over- and under-enhancement, halo effects at edges and the degradation of the signal-to-noise ratio as the enhancement of details increases. Some of those problems manifest in the background and some in the details of the enhanced image. O...

Full description

Saved in:
Bibliographic Details
Published in:Signal processing. Image communication 2019-02, Vol.71, p.45-55
Main Authors: Tohl, Damian, Li, Jim S. Jimmy
Format: Article
Language:English
Subjects:
Online Access:Get full text
Tags: Add Tag
No Tags, Be the first to tag this record!
Description
Summary:The usual problems associated with image enhancement include over- and under-enhancement, halo effects at edges and the degradation of the signal-to-noise ratio as the enhancement of details increases. Some of those problems manifest in the background and some in the details of the enhanced image. Our proposed method is to apply different techniques to enhance the background and details separately. For enhancement of the image background, a novel multi-level histogram shape segmentation method which will detect abrupt changes in the histogram is proposed so that regions of intensity values with a similar frequency of occurrence are segmented for individual equalization to avoid over-enhancement. For detail enhancement, a novel adaptive median based enhancement method is applied to the details to avoid over- and under-enhancement while suppressing noise by limiting the degree of enhancement in homogeneous regions. Halo effects due to the over-enhancement of edges are avoided in our proposed method by using an edge preserving filter for the separation of the background and details so that edges are excluded from detail enhancement. It has been shown that our proposed method is able to avoid the usual adverse problems of image enhancement while producing adequate overall enhancement. •Apply different techniques to enhance image background and details separately.•Novel multi-level histogram shape segmentation avoids over-enhancing image background.•Novel adaptive median based detail enhancement reduces noise in homogeneous regions.•Separation of edges from details using an edge-preserving filter avoids halo effects.
ISSN:0923-5965
1879-2677
DOI:10.1016/j.image.2018.10.011