Land Cover Change Detection With VHR Satellite Imagery Based on Multi-Scale SLIC-CNN and SCAE Features

Change detection with very high resolution (VHR) satellite images is of great application values when evaluating and monitoring land use changes. However, intrinsic complexity of satellite images will introduce more difficulties to change detection tasks. In this study, a new change detection method...

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Main Authors: Ran Jing, Zhaoning Gong, Hongliang Guan
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9298743/
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spelling doaj-e080e81047af44f38a1d114cbb900b512021-03-30T04:20:22ZengIEEEIEEE Access2169-35362020-01-01822807022808710.1109/ACCESS.2020.30457409298743Land Cover Change Detection With VHR Satellite Imagery Based on Multi-Scale SLIC-CNN and SCAE FeaturesRan Jing0https://orcid.org/0000-0002-4423-4971Zhaoning Gong1https://orcid.org/0000-0002-5760-6367Hongliang Guan2School of Geosciences, Yangtze University, Wuhan, ChinaCollege of Resource Environment and Tourism, Capital Normal University, Beijing, ChinaCollege of Geospatial Information Science and Technology, Capital Normal University, Beijing, ChinaChange detection with very high resolution (VHR) satellite images is of great application values when evaluating and monitoring land use changes. However, intrinsic complexity of satellite images will introduce more difficulties to change detection tasks. In this study, a new change detection method is proposed by combining multi-scale simple linear iterative clustering-convolutional neural network (SLIC-CNN) with stacked convolutional auto-encoder (SCAE) features to improve change detection capabilities with VHR satellite images. First, the multi-scale SLIC-based image segmentation is performed on multi-temporal images to generate segment objects while keeping their edge information as much as possible. Second, the convolutional layers in a CNN architecture are used to generate change map, then, an SCAE feature-based classification procedure is performed to generate “from-to” change information. Finally, a Bayesian information criterion is used to optimize the results of change detection. In this study, the experiments carried out reveal that the multi-scale SLIC image segmentation algorithm affects the integrity of change regions; CNN features have an effect on the consistency of change regions; and SCAE features influence the performance of support vector machine (SVM) classifiers. And, features extracted from the architectures enhance the ability of information extraction from ground objects. Comparison results also show the superiority to other change detection methods.https://ieeexplore.ieee.org/document/9298743/Change detectionimage segmentationmulti-scale simple linear iterative clustering-convolutional neural network (SLIC-CNN)stacked convolutional auto-encoder (SCAE)VHR satellite imagery
collection DOAJ
language English
format Article
sources DOAJ
author Ran Jing
Zhaoning Gong
Hongliang Guan
spellingShingle Ran Jing
Zhaoning Gong
Hongliang Guan
Land Cover Change Detection With VHR Satellite Imagery Based on Multi-Scale SLIC-CNN and SCAE Features
IEEE Access
Change detection
image segmentation
multi-scale simple linear iterative clustering-convolutional neural network (SLIC-CNN)
stacked convolutional auto-encoder (SCAE)
VHR satellite imagery
author_facet Ran Jing
Zhaoning Gong
Hongliang Guan
author_sort Ran Jing
title Land Cover Change Detection With VHR Satellite Imagery Based on Multi-Scale SLIC-CNN and SCAE Features
title_short Land Cover Change Detection With VHR Satellite Imagery Based on Multi-Scale SLIC-CNN and SCAE Features
title_full Land Cover Change Detection With VHR Satellite Imagery Based on Multi-Scale SLIC-CNN and SCAE Features
title_fullStr Land Cover Change Detection With VHR Satellite Imagery Based on Multi-Scale SLIC-CNN and SCAE Features
title_full_unstemmed Land Cover Change Detection With VHR Satellite Imagery Based on Multi-Scale SLIC-CNN and SCAE Features
title_sort land cover change detection with vhr satellite imagery based on multi-scale slic-cnn and scae features
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Change detection with very high resolution (VHR) satellite images is of great application values when evaluating and monitoring land use changes. However, intrinsic complexity of satellite images will introduce more difficulties to change detection tasks. In this study, a new change detection method is proposed by combining multi-scale simple linear iterative clustering-convolutional neural network (SLIC-CNN) with stacked convolutional auto-encoder (SCAE) features to improve change detection capabilities with VHR satellite images. First, the multi-scale SLIC-based image segmentation is performed on multi-temporal images to generate segment objects while keeping their edge information as much as possible. Second, the convolutional layers in a CNN architecture are used to generate change map, then, an SCAE feature-based classification procedure is performed to generate “from-to” change information. Finally, a Bayesian information criterion is used to optimize the results of change detection. In this study, the experiments carried out reveal that the multi-scale SLIC image segmentation algorithm affects the integrity of change regions; CNN features have an effect on the consistency of change regions; and SCAE features influence the performance of support vector machine (SVM) classifiers. And, features extracted from the architectures enhance the ability of information extraction from ground objects. Comparison results also show the superiority to other change detection methods.
topic Change detection
image segmentation
multi-scale simple linear iterative clustering-convolutional neural network (SLIC-CNN)
stacked convolutional auto-encoder (SCAE)
VHR satellite imagery
url https://ieeexplore.ieee.org/document/9298743/
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AT zhaoninggong landcoverchangedetectionwithvhrsatelliteimagerybasedonmultiscalesliccnnandscaefeatures
AT hongliangguan landcoverchangedetectionwithvhrsatelliteimagerybasedonmultiscalesliccnnandscaefeatures
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