Abstract:
The article presents an algorithm and a methodology of ranking a group of raster images by using the criterion of their expected quality. Ranking refers to the evaluation of a sample of
bitmap images in a descending order of their quality, the image quality assessment being performed
on the basis of a number of statistical parameters, such as coefficients of variation, determination,
rank correlation index, as well as errors (absolute maximum error, average error, average quadratic
error). The differences between the images are based on converting a full-color RGB image into
HSV, Lab, NTSC, XYZ, YCbCr color models, which are represented as one-dimensional pixel matrices. The colour model RGB is taken as a reference. In relation to it, the proposed statistical characteristics of other color models are compared, any object of each color model being compared
with the base model - an RGB image. Based on this comparison, all images of a given group are
analyzed independently of each other. Image quality assessment is performed in a module that can
be used to cycle through multiple images and is represented in numerical form as a real number.
One of the module blocks calculates the statistical parameters between each color model and the
base RGB model. After receiving the values of the quality scores they are ranked according to their
values. As a result, an image with a higher or lower scene quality can be determined. Images with
blocking artifacts, noisy images of the salt & pepper type, and images with strobe effects artifacts
were considered as test images.