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Land Cover Classification of CBERS-02 Images Based on Object-oriented Strategy - A Case Study in Yixing, Jiangsu Province

机译:基于面向对象策略的CBERS-02图像土地覆盖分类 - 以江苏省宜兴的一个案例研究

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With the rapid development of the techniques of space information, RS and computer network, the earth observation technology has also been improved. The recognition and translation of land cover with remote sensing images, as an important branch of geosciences field, has by far become a hot topic. Image information with different scales displays distinct spatial structure, so image analysis with single scale could not meet the heterogeneity and dynamic of pattern and process. Object oriented image analysis could create meaningful objects and build a hierarchical level close to surface character using multi-scale segmentation, different geographical processes could be represented in corresponding image object levels. Object oriented image analysis has realized multi-scale analysis of spatial pattern and process. The extraction of land cover classification based on objects-oriented strategy sets most priority on the multi-scale segmentation of images, the measurement of spectral, geometric and topological characteristics, the interaction between human and computer, and the construction of knowledge base. Taken China-Brazil Earth Resources Satellite (CBERS) CCD image in Aug., 2006, which is geometrically corrected via methods of quadratic polynomial and bilinear interpolation, to control the RMS within one pixel, choosing the typical urban building area and land cover abundant of Yixing City of Jiangsu Province area as the study area, and regarding Ecognition professional software as the platform, the paper carries out the classification experiment on the study areas. The paper does the research by the following steps: 1) according to the characteristics of different surface features types, choosing the optimum scale of the segmented image to extract the objects. Scale parameters are grouped into four levels, i.e. 60, 30, 20, and 5, and all the image layer weights are set to be 1, which can help to get the size of land coverage comprehensively in the area; 2) constructing the land classification system; 3) extracting the characteristics or characteristic associations of the surface feature types. The class-rules quotation of the class hierarchy and semantic structure are used comprehensively to extract the level 1 land coverage type, including cultivated land, grass land, wood land, construction land, water body, and unused land, on the basis of which, further more, the level 2 type of land coverage, including paddy fields, forest, shrubs land, urban land, rural settlements, traffic land, lake, and pond, is re-extracted via the feature-description that is characterized by the combination of multi-function and deformation function expression construction; 4) adopting integration of supervised classification and unsupervised classification to classify the surface feature types, then getting the classification result of the study area. At the end, the paper compares and appraises the classification result between the object oriented and the pixel oriented (such as the maximum likelihood classification, the ISODATA cluster classification) methods. The result indicates that: 1) CBERS CCD image is a kind of moderate resolution satellite data, demonstrating object features mostly as spectral information, but little as structural information. That's why it can not exert its advantages when extracting objects during the process of image segmentation via the objects-oriented technology, as a result, there is no obvious improvement of overall accuracy of the primary class. Precisely, the overall accuracy of the objects-oriented nearest classifier is 69.89%, which is lower than the accuracy, about 71.00%, made by applying an integration of supervised classification and unsupervised classification. 2) By integrating the human-computer interactive systems, exploring the spectral information of the remote-sensing data, the semantic structure of the image, and doing more research on semantic context relationship, we get more secondary classes th
机译:随着空间信息,RS和计算机网络技术的快速发展,地球观测技术也得到了改善。遥感图像的陆地覆盖的识别和翻译,作为地球科学领域的重要分支,到目前为止已经成为一个热门话题。具有不同尺度的图像信息显示不同的空间结构,因此单尺度的图像分析无法满足模式和过程的异质性和动态。面向对象的图像分析可能会产生有意义的对象并使用多尺度分段构建接近曲面字符的分层级别,不同的地理过程可以在相应的图像对象级别中表示。面向对象的图像分析已经实现了空间模式和过程的多尺度分析。基于物体导向策略的土地覆盖分类的提取在图像的多尺度分割中奠定了大部分优先级,测量光谱,几何和拓扑特征,人与计算机之间的相互作用以及知识库的构建。采取了2006年8月的中国 - 巴西地球资源卫星(CCBERS)CCD Image,通过二次多项式和双线性插值的方法进行几何校正,以控制一个像素内的RMS,选择典型的城市建筑面积和土地覆盖江苏省宜兴市作为研究区,并就认知专业软件为平台,本文对研究领域进行了分类实验。本文通过以下步骤进行了研究:1)根据不同的表面特征类型的特征,选择分段图像的最佳比例来提取物体。比例参数被分组为四个级别,即60,30,20和5,并且所有图像层重量都设置为1,这可以有助于在该地区全面地获得土地覆盖的大小; 2)构建土地分类系统; 3)提取表面特征类型的特征或特征关联。类别层次结构和语义结构的类别引用全面用于提取1级土地覆盖类型,包括耕地,草地,木材土地,建筑陆,水体和未使用的土地,此外,通过特征的特征描述重新提取2级土地覆盖,包括稻田,森林,灌木土地,城市,农村定居点,交通陆地,湖泊和池塘。多功能和变形功能表达结构; 4)采用监督分类和无监督分类的集成来分类表面特征类型,然后获取研究区域的分类结果。在最后,本文比较和评估在面向对象和面向像素的对象之间的分类结果(例如最大似然分类,ISODATA群集分类)方法。结果表明:1)CBERS CCD图像是一种中频分辨率的卫星数据,主要作为光谱信息演示对象特征,但很少作为结构信息。这就是为什么它不能在通过面向对象的技术过程中提取物体时无法发挥其优势的原因,因此,初级类的整体精度没有明显提高。精确地,面向对象的最近分类器的总体准确性为69.89%,低于通过应用监督分类和无监督分类的整合而低于准确性约71.00%。 2)通过集成人机交互系统,探索遥感数据的光谱信息,图像的语义结构,以及对语义上下文关系做出更多研究,我们得到更多的次级类别

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