• Corpus ID: 42183545

A Comprehensive Review of Image Enhancement Techniques

@inproceedings{SawantACR,
  title={A Comprehensive Review of Image Enhancement Techniques},
  author={H. K. Sawant and Mahentra Deore}
}

Figures from this paper

March 2018 A Review on Image Enhancement Techniques

In this paper, Image Enhancement techniques such as Point processing and Histogram Equalization techniques are reviewed and discussed and their performances are evaluated based on the parameters Absolute Mean Brightness Error (AMBE), Contrast and Peak-Signal-to-Noise-Ratio (PSNR) values.

Minutia-based enhancement of fingerprint samples

This work uses a model from Deep Learning for the task of image enhancement and intends to improve the accuracy and reliability of the biometric feature extraction process: No feature should be missed and all features should be extracted as precise as possible.

Retinex-based perceptual contrast enhancement in images using luminance adaptation

  • Kaiqiang XuCheolkon Jung
  • Computer Science
    2017 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)
  • 2017
Experimental results demonstrate that the proposed retinex-based perceptual contrast enhancement in images successfully enhances contrast in images while keeping textures in highlight regions.

Contrast Enhancement Based on Intrinsic Image Decomposition

The proposed intrinsic image decomposition priors are introduced into decomposition models for contrast enhancement and achieves better or comparable subjective and objective quality compared with the state-of-the-art methods.

Detection of Exudates in Digital Fundus Image for Diabetic Retinopathy

  • J. Rao
  • Computer Science, Medicine
  • 2015
This project presents an efficient method to identify and classify the exudates as hard and soft exudate using k-means clustering technique and shows that the MD is the best algorithm for the application of blood vessels image enhancement.

Firefly: A hardware-friendly real-time local brightness adjustment method

A fast learning-based and hardware-friendly method for local brightness adjustment is proposed that in real-time obtains results of higher quality than some of the best methods.

Efficient contrast enhancement through log-power histogram modification

Experimental results show that the proposed method effectively enhances image contrast while preserving overall image brightness, and yields results that are comparable or even of higher quality than those provided by previous state-of-the-art methods.

References

SHOWING 1-10 OF 10 REFERENCES

Image dependent brightness preserving histogram equalization

  • P. Rajavel
  • Computer Science
    IEEE Transactions on Consumer Electronics
  • 2010
The proposed image-dependent brightness preserving histogram equalization technique to enhance image contrast while preserving image brightness and gives better visual quality and PSNR value as compared to several other methods.

An improved image contrast enhancement in multiple-peak images based on histogram equalization

  • Fan YangJin Wu
  • Computer Science, Engineering
    2010 International Conference On Computer Design and Applications
  • 2010
This paper presents an improved image contrast enhancement based on histogram equalization, which is especially suitable for multiple-peak images and outperforms others on the aspects of simplicity and adaptability.

Virtual restoration of ancient Chinese paintings using color contrast enhancement and lacuna texture synthesis

A novel algorithm using color contrast enhancement and lacuna texture synthesis is proposed for the virtual restoration of ancient Chinese paintings and a new patching method is presented using the Markov random field (MRF) model of texture synthesis.

Contrast enhancement and clustering segmentation of gray level images with quantitative information evaluation

Concepts of the gray level energy, discrete entropy, relative entropy and mutual information are proposed to measure outcomes of the adaptive image enhancement and K-means image clustering to evaluate the information flow of gray level image processing.

Approximation Studies on Image Enhancement Using Fuzzy Technique

This paper considers three parameters such as the intensification parameter t, the fuzzifier h f and crossover point c , which strengthen the selection of any value in the interval [0, 1] such that the image can be enhanced.

The Medical Image Display and Analysis Group at the University of North Carolina: Reminiscences and philosophy

  • S. Pizer
  • Medicine
    IEEE Transactions on Medical Imaging
  • 2003
With emphasis on the development of segmentation by deformable models and the principle that validation is a critical part of research developing image analysis and display methods, MIDAG has begun to seriously face the issues of how to validate segmentation and how to choose the parameters of a segmentation method.

A Comprehensive Review of Image Enhancement Techniques

Underlying concepts of underlying concepts, along with algorithms commonly used for image enhancement, are provided, with particular reference to point processing methods and histogram processing.

Segura “ Histogram equalization of speech representation for robust speech recognition

  • Speech Audio Processing
  • 2005

Araújo ” MultiHistogram Equalization Methods for Contrast Enhancement and Brightness Preserving

  • IEEE Transactions on Consumer Electronics