Optimal Combination of Classification Algorithms and Feature Ranking Methods for Object-Based Classification of Submeter Resolution Z/I-Imaging DMC Imagery

Object-based image analysis allows several different features to be calculated for the resulting objects. However, a large number of features means longer computing times and might even result in a loss of classification accuracy. In this study, we use four feature ranking methods (maximum correlati...

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Main Authors: Fulgencio Cánovas-García, Francisco Alonso-Sarría
Format: Article
Language:English
Published: MDPI AG 2015-04-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/7/4/4651
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spelling doaj-af80cfaa76fd4e15bcb36297470b0d932020-11-25T01:11:49ZengMDPI AGRemote Sensing2072-42922015-04-01744651467710.3390/rs70404651rs70404651Optimal Combination of Classification Algorithms and Feature Ranking Methods for Object-Based Classification of Submeter Resolution Z/I-Imaging DMC ImageryFulgencio Cánovas-García0Francisco Alonso-Sarría1Instituto Universitario del Agua y del Medio Ambiente, Universidad de Murcia, Edificio D Campus de Espinardo s/n, 30100 Murcia, SpainInstituto Universitario del Agua y del Medio Ambiente, Universidad de Murcia, Edificio D Campus de Espinardo s/n, 30100 Murcia, SpainObject-based image analysis allows several different features to be calculated for the resulting objects. However, a large number of features means longer computing times and might even result in a loss of classification accuracy. In this study, we use four feature ranking methods (maximum correlation, average correlation, Jeffries–Matusita distance and mean decrease in the Gini index) and five classification algorithms (linear discriminant analysis, naive Bayes, weighted k-nearest neighbors, support vector machines and random forest). The objective is to discover the optimal algorithm and feature subset to maximize accuracy when classifying a set of 1,076,937 objects, produced by the prior segmentation of a 0.45-m resolution multispectral image, with 356 features calculated on each object. The study area is both large (9070 ha) and diverse, which increases the possibility to generalize the results. The mean decrease in the Gini index was found to be the feature ranking method that provided highest accuracy for all of the classification algorithms. In addition, support vector machines and random forest obtained the highest accuracy in the classification, both using their default parameters. This is a useful result that could be taken into account in the processing of high-resolution images in large and diverse areas to obtain a land cover classification.http://www.mdpi.com/2072-4292/7/4/4651random forestfeature selectionobject-based image analysisHughes effectphotogrammetric cameraclassification
collection DOAJ
language English
format Article
sources DOAJ
author Fulgencio Cánovas-García
Francisco Alonso-Sarría
spellingShingle Fulgencio Cánovas-García
Francisco Alonso-Sarría
Optimal Combination of Classification Algorithms and Feature Ranking Methods for Object-Based Classification of Submeter Resolution Z/I-Imaging DMC Imagery
Remote Sensing
random forest
feature selection
object-based image analysis
Hughes effect
photogrammetric camera
classification
author_facet Fulgencio Cánovas-García
Francisco Alonso-Sarría
author_sort Fulgencio Cánovas-García
title Optimal Combination of Classification Algorithms and Feature Ranking Methods for Object-Based Classification of Submeter Resolution Z/I-Imaging DMC Imagery
title_short Optimal Combination of Classification Algorithms and Feature Ranking Methods for Object-Based Classification of Submeter Resolution Z/I-Imaging DMC Imagery
title_full Optimal Combination of Classification Algorithms and Feature Ranking Methods for Object-Based Classification of Submeter Resolution Z/I-Imaging DMC Imagery
title_fullStr Optimal Combination of Classification Algorithms and Feature Ranking Methods for Object-Based Classification of Submeter Resolution Z/I-Imaging DMC Imagery
title_full_unstemmed Optimal Combination of Classification Algorithms and Feature Ranking Methods for Object-Based Classification of Submeter Resolution Z/I-Imaging DMC Imagery
title_sort optimal combination of classification algorithms and feature ranking methods for object-based classification of submeter resolution z/i-imaging dmc imagery
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2015-04-01
description Object-based image analysis allows several different features to be calculated for the resulting objects. However, a large number of features means longer computing times and might even result in a loss of classification accuracy. In this study, we use four feature ranking methods (maximum correlation, average correlation, Jeffries–Matusita distance and mean decrease in the Gini index) and five classification algorithms (linear discriminant analysis, naive Bayes, weighted k-nearest neighbors, support vector machines and random forest). The objective is to discover the optimal algorithm and feature subset to maximize accuracy when classifying a set of 1,076,937 objects, produced by the prior segmentation of a 0.45-m resolution multispectral image, with 356 features calculated on each object. The study area is both large (9070 ha) and diverse, which increases the possibility to generalize the results. The mean decrease in the Gini index was found to be the feature ranking method that provided highest accuracy for all of the classification algorithms. In addition, support vector machines and random forest obtained the highest accuracy in the classification, both using their default parameters. This is a useful result that could be taken into account in the processing of high-resolution images in large and diverse areas to obtain a land cover classification.
topic random forest
feature selection
object-based image analysis
Hughes effect
photogrammetric camera
classification
url http://www.mdpi.com/2072-4292/7/4/4651
work_keys_str_mv AT fulgenciocanovasgarcia optimalcombinationofclassificationalgorithmsandfeaturerankingmethodsforobjectbasedclassificationofsubmeterresolutionziimagingdmcimagery
AT franciscoalonsosarria optimalcombinationofclassificationalgorithmsandfeaturerankingmethodsforobjectbasedclassificationofsubmeterresolutionziimagingdmcimagery
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