Specific Land Cover Class Mapping by Semi-Supervised Weighted Support Vector Machines

In many remote sensing projects on land cover mapping, the interest is often in a sub-set of classes presented in the study area. Conventional multi-class classification may lead to a considerable training effort and to the underestimation of the classes of interest. On the other hand, one-class cla...

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Main Authors: Joel Silva, Fernando Bacao, Mario Caetano
Format: Article
Language:English
Published: MDPI AG 2017-02-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/9/2/181
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spelling doaj-6a35bcbcfc5846d0b8d662ef023b1c3b2020-11-25T00:46:51ZengMDPI AGRemote Sensing2072-42922017-02-019218110.3390/rs9020181rs9020181Specific Land Cover Class Mapping by Semi-Supervised Weighted Support Vector MachinesJoel Silva0Fernando Bacao1Mario Caetano2NOVA Information Management School, Universidade Nova de Lisboa, Lisboa 1070, PortugalNOVA Information Management School, Universidade Nova de Lisboa, Lisboa 1070, PortugalNOVA Information Management School, Universidade Nova de Lisboa, Lisboa 1070, PortugalIn many remote sensing projects on land cover mapping, the interest is often in a sub-set of classes presented in the study area. Conventional multi-class classification may lead to a considerable training effort and to the underestimation of the classes of interest. On the other hand, one-class classifiers require much less training, but may overestimate the real extension of the class of interest. This paper illustrates the combined use of cost-sensitive and semi-supervised learning to overcome these difficulties. This method utilises a manually-collected set of pixels of the class of interest and a random sample of pixels, keeping the training effort low. Each data point is then weighted according to its distance to its near positive data point to inform the learning algorithm. The proposed approach was compared with a conventional multi-class classifier, a one-class classifier, and a semi-supervised classifier in the discrimination of high-mangrove in Saloum estuary, Senegal, from Landsat imagery. The derived classification accuracies were high: 93.90% for the multi-class supervised classifier, 90.75% for the semi-supervised classifier, 88.75% for the one-class classifier, and 93.75% for the proposed method. The results show that accuracy achieved with the proposed method is statistically non-inferior to that achieved with standard binary classification, requiring however much less training effort.http://www.mdpi.com/2072-4292/9/2/181one-class support vector machinesweighted support vector machinerandom training setspecific class mappingland covermangroveLandsat
collection DOAJ
language English
format Article
sources DOAJ
author Joel Silva
Fernando Bacao
Mario Caetano
spellingShingle Joel Silva
Fernando Bacao
Mario Caetano
Specific Land Cover Class Mapping by Semi-Supervised Weighted Support Vector Machines
Remote Sensing
one-class support vector machines
weighted support vector machine
random training set
specific class mapping
land cover
mangrove
Landsat
author_facet Joel Silva
Fernando Bacao
Mario Caetano
author_sort Joel Silva
title Specific Land Cover Class Mapping by Semi-Supervised Weighted Support Vector Machines
title_short Specific Land Cover Class Mapping by Semi-Supervised Weighted Support Vector Machines
title_full Specific Land Cover Class Mapping by Semi-Supervised Weighted Support Vector Machines
title_fullStr Specific Land Cover Class Mapping by Semi-Supervised Weighted Support Vector Machines
title_full_unstemmed Specific Land Cover Class Mapping by Semi-Supervised Weighted Support Vector Machines
title_sort specific land cover class mapping by semi-supervised weighted support vector machines
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2017-02-01
description In many remote sensing projects on land cover mapping, the interest is often in a sub-set of classes presented in the study area. Conventional multi-class classification may lead to a considerable training effort and to the underestimation of the classes of interest. On the other hand, one-class classifiers require much less training, but may overestimate the real extension of the class of interest. This paper illustrates the combined use of cost-sensitive and semi-supervised learning to overcome these difficulties. This method utilises a manually-collected set of pixels of the class of interest and a random sample of pixels, keeping the training effort low. Each data point is then weighted according to its distance to its near positive data point to inform the learning algorithm. The proposed approach was compared with a conventional multi-class classifier, a one-class classifier, and a semi-supervised classifier in the discrimination of high-mangrove in Saloum estuary, Senegal, from Landsat imagery. The derived classification accuracies were high: 93.90% for the multi-class supervised classifier, 90.75% for the semi-supervised classifier, 88.75% for the one-class classifier, and 93.75% for the proposed method. The results show that accuracy achieved with the proposed method is statistically non-inferior to that achieved with standard binary classification, requiring however much less training effort.
topic one-class support vector machines
weighted support vector machine
random training set
specific class mapping
land cover
mangrove
Landsat
url http://www.mdpi.com/2072-4292/9/2/181
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