Genetic Programming: From design to improved implementation
LEGRAND, Pierrick
Institut de Mathématiques de Bordeaux [IMB]
Quality control and dynamic reliability [CQFD]
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Institut de Mathématiques de Bordeaux [IMB]
Quality control and dynamic reliability [CQFD]
LEGRAND, Pierrick
Institut de Mathématiques de Bordeaux [IMB]
Quality control and dynamic reliability [CQFD]
Institut de Mathématiques de Bordeaux [IMB]
Quality control and dynamic reliability [CQFD]
OLAGUE, Gustavo
Centro de Investigacion Cientifica y de Education Superior de Ensenada [Mexico] [CICESE]
< Reduce
Centro de Investigacion Cientifica y de Education Superior de Ensenada [Mexico] [CICESE]
Language
en
Communication dans un congrès
This item was published in
GECCO 2016 - Genetic and Evolutionary Computation Conference, 2016-06-20, Denver.
English Abstract
Genetic programming (GP) is an evolutionary-based search paradigm that is well suited to automatically solve difficult design problems. The general principles of GP have been used to evolve mathematical functions, models, ...Read more >
Genetic programming (GP) is an evolutionary-based search paradigm that is well suited to automatically solve difficult design problems. The general principles of GP have been used to evolve mathematical functions, models, image operators, programs, and even antennas and lenses. Since GP evolves the syntax and structure of a solution, the evolutionary process can be carried out in one environment and the solution can then be ported to another. However, given the nature of GP it is common that the evolved designs are unorthodox compared to traditional approaches used in the problem domain. Therefore, efficiently porting, improving or optimizing an evolved design might not be a trivial task. In this work we argue that the same GP principles used to evolve the solution can then be used to optimize a particular new implementation of the design, following the Genetic Improvement approach. In particular, this paper presents a case study where evolved image operators are ported from Matlab to OpenCV, and then the source code is optimized an improved using Genetic Improvement of Software for Multiple Objectives (GISMOE). In the example we show that functional behavior is maintained (output image) while improving non-functional properties (computation time). Despite the fact that this first example is a simple case, it clearly illustrates the possibilities of using GP principles in two distinct stages of the software development process, from design to improved implementation.Read less <
English Keywords
Genetic programming
genetic improvement
computer vision
European Project
Analysis and classification of mental states of vigilance with evolutionary computation
Origin
Hal imported