Title
Metaheuristics for Supervised Parameter Tuning of Multiresolution Segmentation
Date Issued
01 September 2016
Access level
metadata only access
Resource Type
journal article
Author(s)
Feitosa R.Q.
Happ P.N.
Costa G.A.O.P.
Klinger T.
Heipke C.
Pontificia Universidad Católica de Río de Janeiro
Pontificia Universidad Católica de Río de Janeiro
Publisher(s)
Institute of Electrical and Electronics Engineers Inc.
Abstract
This letter evaluates metaheuristics for the supervised parameter tuning of multiresolution-region-growing segmentation. Three groups of metaheuristics are tested in terms of convergence speed and solution quality. Generalized pattern search, mesh adaptive direct search, and Nelder-Mead represent the single-solution group. Differential evolution (DE) represents the population group. DE followed by each of the aforementioned single-solution metaheuristics represents the hybrid metaheuristic group. This letter reveals that the optimization objective functions typically have countless local minima, many of them leading to very poor solutions. Experiments on three data sets demonstrated that single-solution-based methods often lead to a solution with unacceptable quality. DE was less susceptible to be stuck in local minima when compared to single-solution methods, but it was slower in reaching the minima. Moreover, hybrid methods presented the best tradeoff between accuracy and convergence speed.
Start page
1364
End page
1368
Volume
13
Issue
9
Language
English
OCDE Knowledge area
Geociencias, Multidisciplinar Ingeniería eléctrica, Ingeniería electrónica
Scopus EID
2-s2.0-84979247258
Source
IEEE Geoscience and Remote Sensing Letters
ISSN of the container
1545598X
Sources of information: Directorio de Producción Científica Scopus