A Recent Survey on the Applications of Genetic Programming in Image Processing
Asifullah Khan, Aqsa Saeed Qureshi, Noorul Wahab, Mutawara Hussain,, and Muhammad Yousaf Hamza

TL;DR
This survey reviews the diverse applications of Genetic Programming in Image Processing, highlighting techniques, parameters, and future research directions to aid the community.
Contribution
It provides an extensive overview of GP techniques in Image Processing, including parameter analysis, guidelines, and a comparative summary for future research.
Findings
Various GP techniques have been successfully applied in Image Processing.
A comprehensive comparison of parameters used in different applications.
Guidelines and future directions for applying GP in Image Processing.
Abstract
Genetic Programming (GP) has been primarily used to tackle optimization, classification, and feature selection related tasks. The widespread use of GP is due to its flexible and comprehensible tree-type structure. Similarly, research is also gaining momentum in the field of Image Processing, because of its promising results over vast areas of applications ranging from medical Image Processing to multispectral imaging. Image Processing is mainly involved in applications such as computer vision, pattern recognition, image compression, storage, and medical diagnostics. This universal nature of images and their associated algorithm, i.e., complexities, gave an impetus to the exploration of GP. GP has thus been used in different ways for Image Processing since its inception. Many interesting GP techniques have been developed and employed in the field of Image Processing, and consequently, we…
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