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Urban Vegetation Estimation Derived from QuickBird Based on Object-oriented Method

机译:基于面向对象方法的QuickBird估算城市植被估算

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Urban vegetation is considered a crucial factor for realizing environmental quality goals and foreseeing sustainable local development in the framework of Local Agenda21 guiding environmental politics. High-resolution image offer abundance function in improving method of urban environment and guideline of evaluation. The method of Object-oriented classification, considered both spectral characters and structural information, can provide high-resolution images' classification precision and reduce large data redundancy compared with the traditional pixel-based classification methods. In this paper, we use object-oriented method to extract different green space based on various urban environmental land use, such as commonality green, street green and so on. The QUICKBIRD image is segmented to a set of different scale image. we have make many experiment in order to obtain the optimal segmentation of every level, so the image is segmented by scale 6, and then each object is classified into non-vegetation and 3 kinds of vegetation classes based on the nearest neighbour classifier (NN), Due to the effect of mixed pixels, the second segmentation level scale 5 is carried out into the non-vegetation class and several omitted vegetation objects are derived. Finally, we use a GIS mapping data combined with the results of vegetation classification to separate urban vegetation area into different usages (i.e. commonality green, street green...). Through analyse to the result of classification, the area of the vegetation is 597.63 hm{sup}2, the urban garden fraction is 25.38%. This method offers a new application approach for classifying the high-resolution remote sensing image and the result of accuracy can reach 98%.
机译:城市植被被认为是实现环境质量目标的关键因素,并在地方议程21引导环境政治的框架中预见可持续的地方发展。高分辨率图像提高城市环境方法和评估指南的丰富功能。与传统的基于像素的分类方法相比,面向对象分类的面向对象分类的方法可以提供高分辨率图像的分类精度并降低大数据冗余。在本文中,我们使用面向对象的方法基于各种城市环境土地使用,如共性绿色,街道绿色等。 QuickBird图像被分段为一组不同的刻度图像。我们已经进行了许多实验,以获得每个级别的最佳分割,因此图像被规模6分段,然后每个物体被分类为基于最近的邻邻分类器(NN)的非植被和3种植被类,由于混合像素的效果,第二分割水平刻度5进行到非植被类中,并且省略了几个省略的植被物体。最后,我们使用GIS映射数据与植被分类的结果相结合,将城市植被区域分为不同的用途(即共同的绿色,街道绿色......)。通过分析对分类的结果,植被面积为597.63米{SUP} 2,城市园林分数为25.38%。该方法提供了一种用于对高分辨率遥感图像进行分类的新应用方法,并且精度的结果可以达到98%。

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