Exact histogram equalization and specification

版本 1.0.1.1 (5.6 KB) 作者: Anton Semechko
Perform exact histogram specification or equalization of 2D grayscale images
6.7K 次下载
更新时间 2021/12/11

Exact Histogram Specification & Equalization of Grayscale Images

View Exact histogram equalization and specification on File Exchange

Histogram equalization is a traditional image enhancement technique which aims to improve visual appearance of the image by assigning equal number of pixels to all available intensity values. Histogram specification is a generalization of histogram equalization and is typically used as a standardization technique to normalize image with respect to a desired probability mass function or properties such as mean intensity, energy and entropy. Unlike classical histogram specification, exact histogram specification algorithm implemented here is able to modify the histogram of any image almost exactly (see snapshot).

The .m file exact_histogram.m is an implementation of an exact histogram specification algorithm described in:

[1] Coltuc D. and Bolon P., 1999, "Strict ordering on discrete images and applications", Proceedings 1999 International Conference on Image Processing

[2] Coltuc D., Bolon P. and Chassery J-M., 2006, "Exact histogram specification", IEEE Transcations on Image Processing 15(5):1143-1152

For a quick demo enter demoHS into Matlab command window.

To access additional information regrading function enter: help exact_histogram

License

MIT © 2019 Anton Semechko a.semechko@gmail.com

引用格式

Anton Semechko (2024). Exact histogram equalization and specification (https://github.com/AntonSemechko/exact_histogram), GitHub. 检索来源 .

MATLAB 版本兼容性
创建方式 R2008a
兼容任何版本
平台兼容性
Windows macOS Linux

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

无法下载基于 GitHub 默认分支的版本

版本 已发布 发行说明
1.0.1.1

Use README.md from GitHub

1.0.1.0

- migrated to GitHub

1.0.0.0

要查看或报告此来自 GitHub 的附加功能中的问题,请访问其 GitHub 仓库
要查看或报告此来自 GitHub 的附加功能中的问题,请访问其 GitHub 仓库