GEOGRAPHICAL RESEARCH 鈥衡�� 2004, Vol. 23 鈥衡�� Issue (2): 274-280.DOI: 10.11821/yj2004020016

鈥� Earth Surface Processes 鈥� Previous Articles    

Study on extraction of urban green space from IKONOS remote sensing images

ZHANG You-shui, FENG Xue-zhi, DU Jin-kang, GU Guo-qin   

  1. Department of Urban and Resources Science, Nanjing University, Nanjing 210093, China
  • Received:2003-06-08 Revised:2004-02-01 Online:2004-04-15 Published:2004-04-15

IKONOS褰卞儚鍦ㄥ煄甯傜豢鍦版彁鍙栦腑鐨勫簲鐢�

寮犲弸姘�, 鍐鏅�, 閮介噾搴�, 椤惧浗鐞�   

  1. 鍗椾含澶у鍩庡競涓庤祫婧愬绯�,鍗椾含210093
  • 浣滆�呯畝浠�:寮犲弸姘�(1974-),鐢�,鍗氬+鐢熴�備富瑕佷粠浜嬮仴鎰熶笌鍦扮悊淇℃伅绯荤粺搴旂敤鐮旂┒銆�
  • 鍩洪噾璧勫姪:

    涓痉鍚堜綔“姹熷畞鍦熷湴鍒╃敤涓庡彲鎸佺画鍙戝睍”(SILUP)椤圭洰璧勫姪

Abstract:

This paper discusses about the extraction of urban green space from an IKONOS image using a hierarchical classification technique. Green space information was obtained based on the spectral characteristics of different objects with the help of available corresponding methods after the combination of IKONOS multi-spectral data. Due to high resolution of IKONOS imagery, large amount of data and heterogeneous nature of spectrum, the extraction of urban green space was carried out on segments after image segmentation. This would help much improving the accuracy of extraction of urban green space from the whole image. In test area of the image, the spectral characteristics of different features in all 4 bands are analyzed. The spectral characteristics of old urban area and asphalt road are similar to those of part of green space. Moreover, it is difficult to extract green space under the shadow. In order to extract information from the mixed green space with non-green space, through enhancing NDVI values of a green space under the shadow, parts of green space are extracted (NDVI > 0.18), then parts of non-green space are eliminated. The next step is to extract green space from mixed green space and non-green space based on spectral knowledge and unsupervised ISODATA clustering. Finally, green space information of test area is obtained by aggregating different levels of green space. The methodology is basically concerned with the object spectral features and noise due to the mixture of different land-use/land-cover categories is significantly avoided. To demonstrate the efficiency of proposed method, unsupervised ISODATA clustering method was used to extract green space from the test area,then both results were compared to show accuracy. The visual interpretation and ground truth checks of the test area have proved that the classification accuracy and productivity accuracy of the first method are higher than that of the latter.

Key words: information extraction, green space, normalized difference vegetation index, mixed pixel

鎽樿锛�

鏈枃浠ュ崡浜煄甯備负渚� ,閲嶇偣璁ㄨ浜嗗熀浜嶪KONOS褰卞儚鐨勫煄甯傜豢鍦颁俊鎭垎绾у垎绫绘彁鍙栨柟娉� ,閫氳繃灏咺KONOS澶氬厜璋辨暟鎹悎鎴� ,鏍规嵁鍚勭被鍦扮墿鐨勪笉鍚屽厜璋辩壒寰� ,閲囧彇鐩稿簲鐨勬柟娉曟彁鍙栧嚭鍚勫眰淇℃伅銆傚湪姝よ繃绋嬩腑 ,浠旂粏鍒嗘瀽鍦扮墿闂村湪IKONOS 4涓尝娈典腑鐨勫厜璋卞樊寮� ,闈炵嚎鎬у寮洪槾褰卞尯缁垮湴鐨凬DVI鍊� ,鍒╃敤鍏夎氨宸紓鍒嗗眰鎻愬彇銆佸墧闄や俊鎭� ,鏈�鍚庢妸鍚勫垎绾х豢鍦颁俊鎭悎骞跺緱鍒版暣浣撶豢鍦板垎甯冨浘銆傚垎绾у垎绫绘硶鍏呭垎鑰冭檻鍚勭被鐩爣鐨勪笉鍚岀壒鐐� ,閬垮厤浜嗛�氬父鍗曚竴鍒嗙被鏂规硶涓崟绾埄鐢ㄥ厜璋辩壒寰佹墍閫犳垚鐨勫湴鐗╂贩鍒嗙幇璞°��

鍏抽敭璇�: 淇℃伅鎻愬彇, 缁垮湴, 褰掍竴鍖栨琚寚鏁�, 娣峰悎鍍忓厓information extraction, green space, normalized difference vegetation index, mixed pixel