Title
Potential of support vector regression for optimization of lens system
Abstract
Lens system design is an important factor in image quality. The main aspect of the lens system design methodology is the optimization procedure. Since optimization is a complex, non-linear task, soft computing optimization algorithms can be used. There are many tools that can be employed to measure optical performance, but the spot diagram is the most useful. The spot diagram gives an indication of the image of a point object. In this paper, the spot size radius is considered an optimization criterion. Intelligent soft computing scheme Support Vector Regression (SVR) is implemented. In this study, the polynomial and radial basis functions (RBF) are applied as the SVR kernel function to estimate the optimal lens system parameters. The performance of the proposed estimators is confirmed with the simulation results. The SVR results are then compared with other soft computing techniques. According to the results, a greater improvement in estimation accuracy can be achieved through the SVR with polynomial basis function compared to other soft computing methodologies. The SVR coefficient of determination R 2 with the polynomial function was 0.9975 and with the radial basis function the R 2 was 0.964. The new optimization methods benefit from the soft computing capabilities of global optimization and multi-objective optimization rather than choosing a starting point by trial and error and combining multiple criteria into a single criterion in conventional lens design techniques. Lens system design represents a crucial factor for good image quality.Optimization procedure is the main part of the lens system design methodology.Soft computing methodologies optimization application.Adaptive neuro-fuzzy inference system (ANFIS) application.Support vector regression (SVR application).
Year
DOI
Venue
2015
10.1016/j.cad.2014.10.003
Computer-Aided Design
Keywords
Field
DocType
optimization,soft computing
Polynomial basis,Mathematical optimization,Radial basis function,Global optimization,Polynomial,Support vector machine,Adaptive neuro fuzzy inference system,Soft computing,Mathematics,Kernel (statistics)
Journal
Volume
Issue
ISSN
62
C
0010-4485
Citations 
PageRank 
References 
2
0.38
13
Authors
7
Name
Order
Citations
PageRank
Torki A. Altameem1324.64
Vlastimir Nikolic2122.03
Shahaboddin Shamshirband351253.36
Dalibor Petkovic422320.91
Hossein Javidnia5104.71
Miss Laiha Mat Kiah619513.78
Abdullah Gani7188791.22