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REMOTE SENSING FOR LAND & RESOURCES    2017, Vol. 29 Issue (3) : 92-97     DOI: 10.6046/gtzyyg.2017.03.13
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Residential area extraction for high resolution remote sensing image based on data field and density clustering
YUE Mengxue1, QIN Kun1, 2, ZHANG Enbing1, ZHANG Ye1, ZENG Cheng1
1. School of Remote Sensing and Information Engineering, Wuhan University, Wuhan 430079, China;
2. Collaborative Innovation Center of Geospatial Technology, Wuhan 430079, China
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Abstract  Data field can describe the correlation between data objects, and is a simulation of interaction between particles in physical field. Potential value of a data object in data field can effectively represent the spatial interactions of its neighborhoods, and it can do so for pixels in high resolution remote-sensing image. In this paper, the authors propose a method for residential area extraction from high resolution remote-sensing image using data field and density clustering. The major steps are as follows: the generating of a high resolution remote-sensing image data field; the calculation if potential value for each pixel in this field to obtain a new feature image; the segmentation of the feature image via watershed segmentation, and the calculation of centroids of segmentation results; the clustering of all the centroids into different clusters based on the density, with the extracted residential area composed of target clusters. Compared with existing relative methods of residential areas extraction for high resolution remote-sensing images, the experimental results suggest that the presented method is robust and efficient.
Keywords dynamic heterogeneous      space plotting information      dynamic access     
Issue Date: 15 August 2017
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NI Jinsheng
LIU Xiang
YANG Jinlin
LI Ying
SU Xiaoyu
ZHU Xueshan
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NI Jinsheng,LIU Xiang,YANG Jinlin, et al. Residential area extraction for high resolution remote sensing image based on data field and density clustering[J]. REMOTE SENSING FOR LAND & RESOURCES, 2017, 29(3): 92-97.
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https://www.gtzyyg.com/EN/10.6046/gtzyyg.2017.03.13     OR     https://www.gtzyyg.com/EN/Y2017/V29/I3/92
[1] Pesaresi M,Gerhardinger A,Kayitakire F.A robust built-up area presence index by anisotropic rotation-invariant textural measure[J].IEEE Journal of Selected Topics in Applied Earth Observation and Remote Sensing,2008,1(3):180-192.
[2] 沈小乐,邵振峰,田英洁.纹理特征与视觉注意相结合的建筑区提取[J].测绘学报,2014,43(8):842-847.
Shen X L,Shao Z F,Tian Y J.Built-up areas extraction by textural feature and visual attention mechanism[J].Acta Geodaetica et Cartographica Sinica,2014,43(8):842-847.
[3] Kovács A,Szirányi T.Improved Harris feature point set for orientation-sensitive urban-area detection in aerial images[J].IEEE Geoscience and Remote Sensing Letters,2013,10(4):796-800.
[4] 陈 洪,陶 超,邹峥嵘,等.利用边缘密度特征提取高分辨率遥感影像中的居民区[J].应用科学学报,2014,32(5):537-542.
Chen H,Tao C,Zou Z R,et al.Extraction of built-up areas extraction from high-resolution remote-sensing images using edge density features[J].Journal of Applied Sciences,2014,32(5):537-542.
[5] Shi H,Chen L,Bi F K,et al.Accurate urban area detection in remote sensing images[J].IEEE Geoscience and Remote Sensing Letters,2015,12(9):1948-1952.
[6] 李德毅,淦文燕,刘璐莹.人工智能与认知物理学[C]//中国人工智能学会第10届全国学术年会论文集.北京:北京邮电大学出版社,2003:6-15.
Li D Y,Gan W Y,Liu L Y.Artificial intelligence and cognitive physics[C]//Progress of Artificial Intelligence in China 2003.Beijing:BUPT Publishing House,2003:6-15.
[7] Li D Y,Wang S L,Gan W Y,et al.Data field for hierarchical clustering[J].International Journal of Data Warehousing and Mining,2011,7(4):43-63.
[8] 陈一祥.高分影像空间结构特征建模与信息提取[D].武汉:武汉大学,2013.
Chen Y X.Modeling of Spatial Structural Features and Information Extraction for High Resolution Remote Sensing Images[D].Wuhan:Wuhan University,2013.
[9] Wu T,Qin K.Data field-based transition region extraction and thresholding[J].Optics and Lasers in Engineering,2012,50(2):131-139.
[10] 陶建斌,舒 宁,沈照庆.基于数据场聚类的遥感影像分类方法研究[J].国土资源遥感,2008,20(3):20-23,26.doi:10.6046/gtzyyg.2008.03.05"> doi:10.6046/gtzyyg.2008.03.05.
Tao J B,Shu N,Shen Z Q.A study of the method for clssification of remote sensing images based on data field cluster[J].Remote Sensing for Land and Resources,2008,20(3):20-23,26.doi:10.6046/gtzyyg.2008.03.05"> doi:10.6046/gtzyyg.2008.03.05.
[11] Gonzalez R C,Woods R E.Digital Image Processing[M].2nd ed. Upper Saddle River,NJ:Prentice Hall,2002.
[12] Ester M,Kriegel H P,Sander J,et al.A density-based algorithm for discovering clusters in large spatial databases with noise[C]//Proceedings of the 2nd International Conference on Knowledge Discovery and Data Mining.Portland:AAAI Press,1996:226-231.
[13] Sirmacek B,Unsalan C.Urban area detection using local feature points and spatial voting[J].IEEE Geoscience and Remote Sensing Letters,2010,7(1):146-150.
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