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Combining Spectral with Texture Features into Objectoriented Classification in Mountainous Terrain Using Advanced Land Observing Satellite Image

Combining Spectral with Texture Features into Objectoriented Classification in Mountainous Terrain Using Advanced Land Observing Satellite Image
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摘要 Most existing classification studies use spectral information and those were adequate for cities or plains. This paper explores classification method suitable for the ALOS (Advanced Land Observing Satellite) in mountainous terrain. Mountainous terrain mapping using ALOS image faces numerous challenges. These include spectral confusion with other land cover features, topographic effects on spectral signatures (such as shadow). At first, topographic radiometric correction was carried out to remove the illumination effects of topography. In addition to spectral features, texture features were used to assist classification in this paper. And texture features extracted based on GLCM (Gray Level Co- occurrence Matrix) were not only used for segmentation, but also used for building rules. The performance of the method was evaluated and compared with Maximum Likelihood Classification (MLC). Results showed that the object-oriented method integrating spectral and texture features has achieved overall accuracy of 85.73% with a kappa coefficient of 0.824, which is 13.48% and o.145 respectively higher than that got by MLC method. It indicated that texture features can significantly improve overall accuracy, kappa coefficient, and the classification precision of existing spectrum confusion features. Object-oriented method Integrating spectral and texture features is suitable for land use extraction of ALOS image in mountainous terrain.
出处 《Journal of Mountain Science》 SCIE CSCD 2013年第5期768-776,共9页 山地科学学报(英文)
基金 supported jointly by Key Laboratory of Geo-special Information Technology, Ministry of Land and Resources (Grant No. KLGSIT2013-12) Knowledge Innovation Program (Grant No. KSCX1-YW-09-01) of Chinese Academy of Sciences
关键词 Texture features Object-orientedclassification Land use MOUNTAIN ALOS 纹理特征提取 面向对象方法 陆地观测卫星 光谱信息 地形测绘 分类方法 卫星影像 灰度共生矩阵
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  • 1Aplin P (2006) On scales and dynamics in 0bserving the environment, International J0urnal ofRem0te Sensing 27(11): 2123-2140.
  • 2Baatz M, Schipe A (2000) Multiresolution Segmentation: An Optimization Approach for High Quality Multi-scale Image Segmentation. In: Strobl J et al. (eds.), Angewandte geographische informationsverarbeitung XII, Heidelberg, Germany. pp 12-23.
  • 3Baraldi A,'Parmiggiani F (1995) An investigation ofthe textual characteristics associated with gray level co0currence matrix statistical parameters. IEEE Transactions on Geoscience and Rem0te Sensing 33 (2): 293-304.
  • 4Chen CC, Huang CL (1993) Mark0v rand0m fields for texture classification. Pattern Recognition Letters 14 (11): 907-914..
  • 5Coburna CA, R0bertsb ACB (2004) A multiscale texture analysis procedure for improved forest stand classification. International J0urnal ofRem0te Sensing 25 (20): 4287-4308.
  • 6Congalton RG (1991) A review ofassessing the accuracy of classifications ofrem0tely sensed data. Rem0te Sensing of Environment 37 (1): 35-46.
  • 7Dorren LKA, Maier B, Seijmonsbergen AC (2003) Improved Landsat-based forest mapping in steep m0untain0us terrain using 0bject-based classification. F0rest Ecol0gy and Management 183(1): 31-46.
  • 8Drgu L, Tiede D, Leviek SR (20l0) ESP: a to0l to estimate scale parameter for multiresolution image segmentation of rem0tely sensed data. International J0urnal ofGeographical Information Science 24 (6): 859-871.
  • 9Guindon B, Zhang Y, Dillabaugh C (2004) Landsat urban mapping based on a combined spectral-spatial method0l0gy. Rem0te Sensing ofEnvironment 92 (2): 218-232.
  • 10Han N, Wang K, Yu L, Zhang XY (2012) Integration oftexture and landscape features into 0bject-based classification for delineating T0rreya using IKONOS imagery. International J0urnal ofRem0te Sensing 33(7): 2003-2033.

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