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METHOD OF GRASSLAND INFORMATION EXTRACTION BASED ON MULTI-LEVEL SEGMENTATION AND CART MODEL

机译:多层次细分和购物车模型的草地信息提取方法

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It is difficult to extract grassland accurately by traditional classification methods, such as supervised method based on pixels or objects. This paper proposed a new method combing the multi-level segmentation with CART (classification and regression tree) model. The multi-level segmentation which combined the multi-resolution segmentation and the spectral difference segmentation could avoid the over and insufficient segmentation seen in the single segmentation mode. The CART model was established based on the spectral characteristics and texture feature which were excavated from training sample data. Xilinhaote City in Inner Mongolia Autonomous Region was chosen as the typical study area and the proposed method was verified by using visual interpretation results as approximate truth value. Meanwhile, the comparison with the nearest neighbor supervised classification method was obtained. The experimental results showed that the total precision of classification and the Kappa coefficient of the proposed method was 95?% and 0.9, respectively. However, the total precision of classification and the Kappa coefficient of the nearest neighbor supervised classification method was 80?% and 0.56, respectively. The result suggested that the accuracy of classification proposed in this paper was higher than the nearest neighbor supervised classification method. The experiment certificated that the proposed method was an effective extraction method of grassland information, which could enhance the boundary of grassland classification and avoid the restriction of grassland distribution scale. This method was also applicable to the extraction of grassland information in other regions with complicated spatial features, which could avoid the interference of woodland, arable land and water body effectively.
机译:传统的分类方法,例如基于像素或物体的监督方法,很难准确地提取草地。本文提出了一种将多层次细分与CART(分类回归树)模型相结合的新方法。将多分辨率分割和谱差分割相结合的多级分割可以避免单分割模式下的分割过度和不足。基于从训练样本数据中挖掘出的光谱特征和纹理特征,建立了CART模型。以内蒙古自治区锡林浩特市为典型研究区域,以视觉解释结果作为近似真值,验证了该方法的有效性。同时,与最近邻监督分类法进行了比较。实验结果表明,该方法的总分类精度为95%,Kappa系数为0.9。但是,分类的总精度和最近邻监督分类方法的Kappa系数分别为80%和0.56。结果表明,本文提出的分类精度高于最近邻监督分类方法。实验证明,该方法是一种有效的草地信息提取方法,可以扩大草地分类的边界,避免草地分布规模的限制。该方法也适用于空间特征复杂的其他地区的草地信息提取,可以有效避免林地,耕地和水体的干扰。

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