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Automated soil resources mapping based on decision tree and Bayesian predictive modeling

机译:基于决策树和贝叶斯预测模型的土壤资源自动化制图

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摘要

This article presents two approaches for automated building of knowledge bases of soil resources mapping. These methods used decision tree and Bayesian predictive modeling, respectively to generate knowledge from training data. With these methods, building a knowledge base for automated soil mapping is easier than using the conventional knowledge acquisition approach. The knowledge bases built by these two methods were used by the knowledge classifier for soil type classification of the Longyou area,Zhejiang Province, China using TM bi-temporal imageries and GIS data. To evaluate the performance of the resultant knowledge bases, the classification results were compared to existing soil map based on field survey. The accuracy assessment and analysisof the resultant soil maps suggested that the knowledge bases built by these two methods were of good quality for mapping distribution model of soil classes over the study area.
机译:本文提出了两种自动建立土壤资源图谱知识库的方法。这些方法分别使用决策树和贝叶斯预测模型从训练数据中生成知识。与使用常规知识获取方法相比,使用这些方法为自动土壤映射建立知识库更为容易。知识分类器使用这两种方法建立的知识库使用TM双时相影像和GIS数据对中国龙游地区的土壤类型进行分类。为了评估所得知识库的性能,将分类结果与基于实地调查的现有土壤图进行了比较。所得土壤图的准确性评估和分析表明,这两种方法建立的知识库对于研究区域内土壤类别分布模型的绘制具有良好的质量。

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