Object-Based Image Classification of Summer Crops with Machine Learning Methods

The strategic management of agricultural lands involves crop field monitoring each year. Crop discrimination via remote sensing is a complex task, especially if different crops have a similar spectral response and cropping pattern. In such cases, crop identification could be improved by combining ob...

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Main Authors: José M. Peña, Pedro A. Gutiérrez, César Hervás-Martínez, Johan Six, Richard E. Plant, Francisca López-Granados
Format: Article
Language:English
Published: MDPI AG 2014-05-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/6/6/5019
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spelling doaj-f37e011bb105489f8d7e39668cb90d722020-11-24T22:57:47ZengMDPI AGRemote Sensing2072-42922014-05-01665019504110.3390/rs6065019rs6065019Object-Based Image Classification of Summer Crops with Machine Learning MethodsJosé M. Peña0Pedro A. Gutiérrez1César Hervás-Martínez2Johan Six3Richard E. Plant4Francisca López-Granados5Institute for Sustainable Agriculture, IAS-CSIC, P.O. Box 4084, E-14080 Córdoba, SpainDepartment of Computer Science and Numerical Analysis, University of Cordoba, Campus de Rabanales, E-14071 Córdoba, SpainDepartment of Computer Science and Numerical Analysis, University of Cordoba, Campus de Rabanales, E-14071 Córdoba, SpainDepartment of Environmental Systems Sciences, Swiss Federal Institute of Technology, ETH-Zurich, CH-8092 Zurich, SwitzerlandDepartment of Plant Sciences, University of California, Davis, CA 95616, USAInstitute for Sustainable Agriculture, IAS-CSIC, P.O. Box 4084, E-14080 Córdoba, SpainThe strategic management of agricultural lands involves crop field monitoring each year. Crop discrimination via remote sensing is a complex task, especially if different crops have a similar spectral response and cropping pattern. In such cases, crop identification could be improved by combining object-based image analysis and advanced machine learning methods. In this investigation, we evaluated the C4.5 decision tree, logistic regression (LR), support vector machine (SVM) and multilayer perceptron (MLP) neural network methods, both as single classifiers and combined in a hierarchical classification, for the mapping of nine major summer crops (both woody and herbaceous) from ASTER satellite images captured in two different dates. Each method was built with different combinations of spectral and textural features obtained after the segmentation of the remote images in an object-based framework. As single classifiers, MLP and SVM obtained maximum overall accuracy of 88%, slightly higher than LR (86%) and notably higher than C4.5 (79%). The SVM+SVM classifier (best method) improved these results to 89%. In most cases, the hierarchical classifiers considerably increased the accuracy of the most poorly classified class (minimum sensitivity). The SVM+SVM method offered a significant improvement in classification accuracy for all of the studied crops compared to the conventional decision tree classifier, ranging between 4% for safflower and 29% for corn, which suggests the application of object-based image analysis and advanced machine learning methods in complex crop classification tasks.http://www.mdpi.com/2072-4292/6/6/5019agricultureASTER satellite imagesobject-oriented image analysishierarchical classificationneural networks
collection DOAJ
language English
format Article
sources DOAJ
author José M. Peña
Pedro A. Gutiérrez
César Hervás-Martínez
Johan Six
Richard E. Plant
Francisca López-Granados
spellingShingle José M. Peña
Pedro A. Gutiérrez
César Hervás-Martínez
Johan Six
Richard E. Plant
Francisca López-Granados
Object-Based Image Classification of Summer Crops with Machine Learning Methods
Remote Sensing
agriculture
ASTER satellite images
object-oriented image analysis
hierarchical classification
neural networks
author_facet José M. Peña
Pedro A. Gutiérrez
César Hervás-Martínez
Johan Six
Richard E. Plant
Francisca López-Granados
author_sort José M. Peña
title Object-Based Image Classification of Summer Crops with Machine Learning Methods
title_short Object-Based Image Classification of Summer Crops with Machine Learning Methods
title_full Object-Based Image Classification of Summer Crops with Machine Learning Methods
title_fullStr Object-Based Image Classification of Summer Crops with Machine Learning Methods
title_full_unstemmed Object-Based Image Classification of Summer Crops with Machine Learning Methods
title_sort object-based image classification of summer crops with machine learning methods
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2014-05-01
description The strategic management of agricultural lands involves crop field monitoring each year. Crop discrimination via remote sensing is a complex task, especially if different crops have a similar spectral response and cropping pattern. In such cases, crop identification could be improved by combining object-based image analysis and advanced machine learning methods. In this investigation, we evaluated the C4.5 decision tree, logistic regression (LR), support vector machine (SVM) and multilayer perceptron (MLP) neural network methods, both as single classifiers and combined in a hierarchical classification, for the mapping of nine major summer crops (both woody and herbaceous) from ASTER satellite images captured in two different dates. Each method was built with different combinations of spectral and textural features obtained after the segmentation of the remote images in an object-based framework. As single classifiers, MLP and SVM obtained maximum overall accuracy of 88%, slightly higher than LR (86%) and notably higher than C4.5 (79%). The SVM+SVM classifier (best method) improved these results to 89%. In most cases, the hierarchical classifiers considerably increased the accuracy of the most poorly classified class (minimum sensitivity). The SVM+SVM method offered a significant improvement in classification accuracy for all of the studied crops compared to the conventional decision tree classifier, ranging between 4% for safflower and 29% for corn, which suggests the application of object-based image analysis and advanced machine learning methods in complex crop classification tasks.
topic agriculture
ASTER satellite images
object-oriented image analysis
hierarchical classification
neural networks
url http://www.mdpi.com/2072-4292/6/6/5019
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