Lu Dengsheng, Hetrick Scott, Moran Emilio, Li Guiying
Indiana University, Anthropological Center for Training and Research on Global Environmental Change, Student Building 331, Bloomington, IN 47405.
J Appl Remote Sens. 2010 Sep 23;4. doi: 10.1117/1.3501124.
Accurately detecting urban expansion with remote sensing techniques is a challenge due to the complexity of urban landscapes. This paper explored methods for detecting urban expansion with multitemporal QuickBird images in Lucas do Rio Verde, Mato Grosso, Brazil. Different techniques, including image differencing, principal component analysis (PCA), and comparison of classified impervious surface images with the matched filtering method, were used to examine urbanization detection. An impervious surface image classified with the hybrid method was used to modify the urbanization detection results. As a comparison, the original multispectral image and segmentation-based mean-spectral images were used during the detection of urbanization. This research indicates that the comparison of classified impervious surface images with matched filtering method provides the best change detection performance, followed by the image differencing method based on segmentation-based mean spectral images. The PCA is not a good method for urban change detection in this study. Shadows and high spectral variation within the impervious surfaces represent major challenges to the detection of urban expansion when high spatial resolution images are used.
由于城市景观的复杂性,利用遥感技术准确检测城市扩张是一项挑战。本文探讨了利用巴西马托格罗索州卢卡斯杜里奥韦尔迪的多时相快鸟影像检测城市扩张的方法。采用了不同的技术,包括图像差值法、主成分分析(PCA)以及将分类不透水表面影像与匹配滤波法进行比较,来检验城市化检测效果。利用混合方法分类的不透水表面影像对城市化检测结果进行修正。作为对比,在城市化检测过程中使用了原始多光谱影像和基于分割的平均光谱影像。本研究表明,将分类不透水表面影像与匹配滤波法进行比较能提供最佳的变化检测性能,其次是基于分割的平均光谱影像的图像差值法。在本研究中,PCA不是用于城市变化检测的好方法。当使用高空间分辨率影像时,不透水表面内的阴影和高光谱变化是检测城市扩张的主要挑战。