A platform for research: civil engineering, architecture and urbanism
Learning personalized exploration in evolutionary design using aesthetic descriptors
Abstract We describe an aesthetic learning approach to one of the most challenging problems in interactive evolutionary design: modeling user preference for lessening the burden placed on users in hundreds of loops. In the approach, two aesthetic descriptors, high-level and low-level descriptors, are proposed based on pixel distribution and aesthetic criteria respectively. Starting with a collection of evaluated images, we apply both descriptors to the images, and then use decision tree learning algorithm to obtain the computational learning model. The model is adopted to automatically guide the subsequent generations. Classification and evolutionary results are shown in our experiments to evaluate the learning model and compare the two descriptors’ learning ability in the evolutionary runs. The reported results indicate that high-level descriptors are more appropriate in approximating user’s implicit aesthetic intentions for solving the problem considered.
Learning personalized exploration in evolutionary design using aesthetic descriptors
Abstract We describe an aesthetic learning approach to one of the most challenging problems in interactive evolutionary design: modeling user preference for lessening the burden placed on users in hundreds of loops. In the approach, two aesthetic descriptors, high-level and low-level descriptors, are proposed based on pixel distribution and aesthetic criteria respectively. Starting with a collection of evaluated images, we apply both descriptors to the images, and then use decision tree learning algorithm to obtain the computational learning model. The model is adopted to automatically guide the subsequent generations. Classification and evolutionary results are shown in our experiments to evaluate the learning model and compare the two descriptors’ learning ability in the evolutionary runs. The reported results indicate that high-level descriptors are more appropriate in approximating user’s implicit aesthetic intentions for solving the problem considered.
Learning personalized exploration in evolutionary design using aesthetic descriptors
Li, Yang (author) / Hu, Changjun (author)
2015-11-17
13 pages
Article (Journal)
Electronic Resource
English
Evolutionary design , Interactive evolutionary computation , User intention , Aesthetic judgement Engineering , Engineering, general , Engineering Design , Mechanical Engineering , Computer-Aided Engineering (CAD, CAE) and Design , Electronics and Microelectronics, Instrumentation , Industrial Design
Overcoming Representation Issues when Including Aesthetic Criteria in Evolutionary Design
British Library Conference Proceedings | 2005
|Environmental aesthetic design
Elsevier | 1991
|Fundamentals of 'aesthetic' design
Online Contents | 1995
Aesthetic Concrete Barrier Design
NTIS | 2005
|Aesthetic concrete barrier design
TIBKAT | 2006
|