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Study on the automatic classification for land use/land cover in arid area based upon remotely sensed image cognition

机译:基于远程感测图像认知的干旱地区土地利用/陆地覆盖自动分类研究

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Traditional classification methods based on Bayes rule only use spectral information, whereas, other characteristics such as shape, size, situation and pattern are seldom taken into account to extract land use and land cover information. A new method based on spectral, contextual and ancillary information has been proposed in this paper to address to the problem of misclassification. The study area is located in an arid area of northern China. Based on eCognition software, A TM image and a DEM was utilized in this paper to investigate the effectiveness of the image-cognition based on classification method in land use/land cover classification of arid areas. The image was first segmented into a number of objects and then classified as 22 classes based on the spectral, shape, area, spatial position, pattern and context information with the fuzzy logic rules. Finally, the classification method has been proved to be effective and produced an overall accuracy up to 85.3% and a Kappa coefficient of 84%. The classification result suggests that this method is effective and feasible to classify the main types of ground objects in the large complex and arid area for land use survey.
机译:基于贝叶斯规则的传统分类方法仅使用光谱信息,而诸如形状,尺寸,情况和图案等其他特征,则很少考虑到提取土地使用和陆地覆盖信息。本文提出了一种基于光谱,上下文和辅助信息的新方法,以解决错误分类问题。研究区位于中国北方的干旱地区。基于认知软件,本文利用了TM图像和DEM,以研究基于土地利用/土地覆盖分类的分类方法的图像认知的有效性。首先将图像分段为多个对象,然后基于具有模糊逻辑规则的光谱,形状,区域,空间位置,模式和上下文信息分类为22类。最后,已经证明了分类方法是有效的,并产生高达85.3%的总精度,κ系数为84%。分类结果表明,这种方法是有效的,可行的,可以对土地使用调查的大型复杂和干旱地区进行分类的地面对象的主要类型。

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