On color image quality assessment using natural image statistics

11/27/2014
by   Mounir Omari, et al.
0

Color distortion can introduce a significant damage in visual quality perception, however, most of existing reduced-reference quality measures are designed for grayscale images. In this paper, we consider a basic extension of well-known image-statistics based quality assessment measures to color images. In order to evaluate the impact of color information on the measures efficiency, two color spaces are investigated: RGB and CIELAB. Results of an extensive evaluation using TID 2013 benchmark demonstrates that significant improvement can be achieved for a great number of distortion type when the CIELAB color representation is used.

READ FULL TEXT
research
11/27/2014

A statistical reduced-reference method for color image quality assessment

Although color is a fundamental feature of human visual perception, it h...
research
10/14/2018

Perceptual Image Quality Assessment through Spectral Analysis of Error Representations

In this paper, we analyze the statistics of error signals to assess the ...
research
11/25/2020

Evaluation of quality measures for color quantization

Visual quality evaluation is one of the challenging basic problems in im...
research
04/11/2020

The Role of Stem Noise in Visual Perception and Image Quality Measurement

This paper considers reference free quality assessment of distorted and ...
research
10/03/2019

Modeling Color Terminology Across Thousands of Languages

There is an extensive history of scholarship into what constitutes a "ba...
research
09/19/2016

Color: A Crucial Factor for Aesthetic Quality Assessment in a Subjective Dataset of Paintings

Computational aesthetics is an emerging field of research which has attr...
research
03/03/2021

Reversible Data Hiding Associated with Digital Halftoning That Allows Printing with Special Color Ink by Using Single Color Layer

We propose an efficient framework of reversible data hiding to preserve ...

Please sign up or login with your details

Forgot password? Click here to reset