A New Binary Encoding Algorithm for the Simultaneous Region-based Classification of Hyperspectral Data and Digital Surface Models

Research output: Contribution to journalArticleResearchpeer review

Authors

  • Huan Xie
  • Christian Heipke
  • Peter Lohmann
  • Uwe Soergel
  • Xiaohua Tong
  • Wenzhong Shi

External Research Organisations

  • Tongji University
  • Hong Kong Polytechnic University
View graph of relations

Details

Original languageEnglish
Pages (from-to)17-33
Number of pages17
JournalPhotogrammetrie, Fernerkundung, Geoinformation
Volume2011
Issue number1
Publication statusPublished - Feb 2011

Abstract

In this paper, an approach is proposed to integrate hyperspectral image data, object and height information into a new region-based binary encoding algorithm for automatically deriving land cover information. After georeferencing the different data sets and deriving a normalized digital surface model (nDSM), connected regions are extracted from the hyperspectral data by applying an edge-based segmentation algorithm. The mean spectrum per region is considered representative for the region. Five parameters are defined to describe the size and shape of the region, namely area, asymmetry, rectangular fit, ratio of length to width, and compactness. Together with the spectral information these parameters and the corresponding height values per region from the nDSM are converted into a binary code. This code is then matched to that of a training data set for classification. In order to evaluate the suggested approach we applied it to a test area in Oberpfaffenhofen, Germany. A manually generated classification served as reference. We also compare our result with the well known support vector machine (SVM) classifier. Based on our test data, we could show that the inclusion of size, shape, and height improves the classification accuracy of binary encoding. We could also show that the new method obtained more accurate and more efficient results when compared to the SVM classification.

Keywords

    Binary encoding, DSM, Hyperspectral images, Integration, Region-based classification

ASJC Scopus subject areas

Cite this

A New Binary Encoding Algorithm for the Simultaneous Region-based Classification of Hyperspectral Data and Digital Surface Models. / Xie, Huan; Heipke, Christian; Lohmann, Peter et al.
In: Photogrammetrie, Fernerkundung, Geoinformation, Vol. 2011, No. 1, 02.2011, p. 17-33.

Research output: Contribution to journalArticleResearchpeer review

Download
@article{a4e72bf13ac145eb99404a7ef7d6e4d2,
title = "A New Binary Encoding Algorithm for the Simultaneous Region-based Classification of Hyperspectral Data and Digital Surface Models",
abstract = "In this paper, an approach is proposed to integrate hyperspectral image data, object and height information into a new region-based binary encoding algorithm for automatically deriving land cover information. After georeferencing the different data sets and deriving a normalized digital surface model (nDSM), connected regions are extracted from the hyperspectral data by applying an edge-based segmentation algorithm. The mean spectrum per region is considered representative for the region. Five parameters are defined to describe the size and shape of the region, namely area, asymmetry, rectangular fit, ratio of length to width, and compactness. Together with the spectral information these parameters and the corresponding height values per region from the nDSM are converted into a binary code. This code is then matched to that of a training data set for classification. In order to evaluate the suggested approach we applied it to a test area in Oberpfaffenhofen, Germany. A manually generated classification served as reference. We also compare our result with the well known support vector machine (SVM) classifier. Based on our test data, we could show that the inclusion of size, shape, and height improves the classification accuracy of binary encoding. We could also show that the new method obtained more accurate and more efficient results when compared to the SVM classification.",
keywords = "Binary encoding, DSM, Hyperspectral images, Integration, Region-based classification",
author = "Huan Xie and Christian Heipke and Peter Lohmann and Uwe Soergel and Xiaohua Tong and Wenzhong Shi",
note = "Funding Information: This study was substantially supported by the China Scholarship Council, National Natural Science Foundation of China (Project No. 40771174), National High Technology Research and Development Program of China (863 Program No. 2007AA12Z178 and 2009AA12Z131), Key Laboratory of Advanced Engineering Surveying of SBSM (Project No. TJES0810)* , and grants from the Program for Young Excellent Talents in Tongji University (Project No. 2009KJ094).",
year = "2011",
month = feb,
doi = "10.1127/1432-8364/2011/0072",
language = "English",
volume = "2011",
pages = "17--33",
journal = "Photogrammetrie, Fernerkundung, Geoinformation",
issn = "1432-8364",
publisher = "E. Schweizerbartsche Verlagsbuchhandlung",
number = "1",

}

Download

TY - JOUR

T1 - A New Binary Encoding Algorithm for the Simultaneous Region-based Classification of Hyperspectral Data and Digital Surface Models

AU - Xie, Huan

AU - Heipke, Christian

AU - Lohmann, Peter

AU - Soergel, Uwe

AU - Tong, Xiaohua

AU - Shi, Wenzhong

N1 - Funding Information: This study was substantially supported by the China Scholarship Council, National Natural Science Foundation of China (Project No. 40771174), National High Technology Research and Development Program of China (863 Program No. 2007AA12Z178 and 2009AA12Z131), Key Laboratory of Advanced Engineering Surveying of SBSM (Project No. TJES0810)* , and grants from the Program for Young Excellent Talents in Tongji University (Project No. 2009KJ094).

PY - 2011/2

Y1 - 2011/2

N2 - In this paper, an approach is proposed to integrate hyperspectral image data, object and height information into a new region-based binary encoding algorithm for automatically deriving land cover information. After georeferencing the different data sets and deriving a normalized digital surface model (nDSM), connected regions are extracted from the hyperspectral data by applying an edge-based segmentation algorithm. The mean spectrum per region is considered representative for the region. Five parameters are defined to describe the size and shape of the region, namely area, asymmetry, rectangular fit, ratio of length to width, and compactness. Together with the spectral information these parameters and the corresponding height values per region from the nDSM are converted into a binary code. This code is then matched to that of a training data set for classification. In order to evaluate the suggested approach we applied it to a test area in Oberpfaffenhofen, Germany. A manually generated classification served as reference. We also compare our result with the well known support vector machine (SVM) classifier. Based on our test data, we could show that the inclusion of size, shape, and height improves the classification accuracy of binary encoding. We could also show that the new method obtained more accurate and more efficient results when compared to the SVM classification.

AB - In this paper, an approach is proposed to integrate hyperspectral image data, object and height information into a new region-based binary encoding algorithm for automatically deriving land cover information. After georeferencing the different data sets and deriving a normalized digital surface model (nDSM), connected regions are extracted from the hyperspectral data by applying an edge-based segmentation algorithm. The mean spectrum per region is considered representative for the region. Five parameters are defined to describe the size and shape of the region, namely area, asymmetry, rectangular fit, ratio of length to width, and compactness. Together with the spectral information these parameters and the corresponding height values per region from the nDSM are converted into a binary code. This code is then matched to that of a training data set for classification. In order to evaluate the suggested approach we applied it to a test area in Oberpfaffenhofen, Germany. A manually generated classification served as reference. We also compare our result with the well known support vector machine (SVM) classifier. Based on our test data, we could show that the inclusion of size, shape, and height improves the classification accuracy of binary encoding. We could also show that the new method obtained more accurate and more efficient results when compared to the SVM classification.

KW - Binary encoding

KW - DSM

KW - Hyperspectral images

KW - Integration

KW - Region-based classification

UR - http://www.scopus.com/inward/record.url?scp=79958822373&partnerID=8YFLogxK

U2 - 10.1127/1432-8364/2011/0072

DO - 10.1127/1432-8364/2011/0072

M3 - Article

AN - SCOPUS:79958822373

VL - 2011

SP - 17

EP - 33

JO - Photogrammetrie, Fernerkundung, Geoinformation

JF - Photogrammetrie, Fernerkundung, Geoinformation

SN - 1432-8364

IS - 1

ER -