Image Segmentation Based on Constrained Spectral Variance Difference and Edge Penalty

Segmentation, which is usually the first step in object-based image analysis (OBIA), greatly influences the quality of final OBIA results. In many existing multi-scale segmentation algorithms, a common problem is that under-segmentation and over-segmentation always coexist at any scale. To address t...

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Main Authors: Bo Chen, Fang Qiu, Bingfang Wu, Hongyue Du
Format: Article
Language:English
Published: MDPI AG 2015-05-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/7/5/5980
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spelling doaj-1614f470bfd04b7baed6adb7669fc3f82020-11-25T01:00:38ZengMDPI AGRemote Sensing2072-42922015-05-01755980600410.3390/rs70505980rs70505980Image Segmentation Based on Constrained Spectral Variance Difference and Edge PenaltyBo Chen0Fang Qiu1Bingfang Wu2Hongyue Du3Key Laboratory of Digital Earth Science, Institute of Remote Sensing and Digital Earth, Chinese Academy of Sciences, Beijing100101, ChinaGeospatial Information Sciences, University of Texas at Dallas, Dallas, TX 75080, USAKey Laboratory of Digital Earth Science, Institute of Remote Sensing and Digital Earth, Chinese Academy of Sciences, Beijing100101, ChinaChina Mapping Technology Service Corporation, Beijing 100088, ChinaSegmentation, which is usually the first step in object-based image analysis (OBIA), greatly influences the quality of final OBIA results. In many existing multi-scale segmentation algorithms, a common problem is that under-segmentation and over-segmentation always coexist at any scale. To address this issue, we propose a new method that integrates the newly developed constrained spectral variance difference (CSVD) and the edge penalty (EP). First, initial segments are produced by a fast scan. Second, the generated segments are merged via a global mutual best-fitting strategy using the CSVD and EP as merging criteria. Finally, very small objects are merged with their nearest neighbors to eliminate the remaining noise. A series of experiments based on three sets of remote sensing images, each with different spatial resolutions, were conducted to evaluate the effectiveness of the proposed method. Both visual and quantitative assessments were performed, and the results show that large objects were better preserved as integral entities while small objects were also still effectively delineated. The results were also found to be superior to those from eCongnition’s multi-scale segmentation.http://www.mdpi.com/2072-4292/7/5/5980remote sensing image segmentationregion mergingmulti-scaleconstrained spectral variance differenceedge penalty
collection DOAJ
language English
format Article
sources DOAJ
author Bo Chen
Fang Qiu
Bingfang Wu
Hongyue Du
spellingShingle Bo Chen
Fang Qiu
Bingfang Wu
Hongyue Du
Image Segmentation Based on Constrained Spectral Variance Difference and Edge Penalty
Remote Sensing
remote sensing image segmentation
region merging
multi-scale
constrained spectral variance difference
edge penalty
author_facet Bo Chen
Fang Qiu
Bingfang Wu
Hongyue Du
author_sort Bo Chen
title Image Segmentation Based on Constrained Spectral Variance Difference and Edge Penalty
title_short Image Segmentation Based on Constrained Spectral Variance Difference and Edge Penalty
title_full Image Segmentation Based on Constrained Spectral Variance Difference and Edge Penalty
title_fullStr Image Segmentation Based on Constrained Spectral Variance Difference and Edge Penalty
title_full_unstemmed Image Segmentation Based on Constrained Spectral Variance Difference and Edge Penalty
title_sort image segmentation based on constrained spectral variance difference and edge penalty
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2015-05-01
description Segmentation, which is usually the first step in object-based image analysis (OBIA), greatly influences the quality of final OBIA results. In many existing multi-scale segmentation algorithms, a common problem is that under-segmentation and over-segmentation always coexist at any scale. To address this issue, we propose a new method that integrates the newly developed constrained spectral variance difference (CSVD) and the edge penalty (EP). First, initial segments are produced by a fast scan. Second, the generated segments are merged via a global mutual best-fitting strategy using the CSVD and EP as merging criteria. Finally, very small objects are merged with their nearest neighbors to eliminate the remaining noise. A series of experiments based on three sets of remote sensing images, each with different spatial resolutions, were conducted to evaluate the effectiveness of the proposed method. Both visual and quantitative assessments were performed, and the results show that large objects were better preserved as integral entities while small objects were also still effectively delineated. The results were also found to be superior to those from eCongnition’s multi-scale segmentation.
topic remote sensing image segmentation
region merging
multi-scale
constrained spectral variance difference
edge penalty
url http://www.mdpi.com/2072-4292/7/5/5980
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AT hongyuedu imagesegmentationbasedonconstrainedspectralvariancedifferenceandedgepenalty
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