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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Analysis of convergent evidence in an evidential reasoning knowledge-based classification
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Analysis of convergent evidence in an evidential reasoning knowledge-based classification

机译:基于证据推理的知识分类中的收敛证据分析

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The use of knowledge-based systems (KBSs) that use evidential reasoning for land-cover mapping derived from remotely sensed images is spreading widely. In recent years, KBSs utilizing the Dempster-Shafer Theory of Evidence (D-S ToE) have been found most successful in a wide range of remote sensing applications, partly because of their ability to combine diverse information sources. An important feature of the D-S ToE is that it provides a measure for the evidential support (belief) accumulated for each object class at each pixel. Despite the importance of cumulative belief values (CBVs) in representing the weighting of supportive versus conflicting evidence for each class, their analysis has received little attention in the literature. The objective of the present study was to assess the performance (represented by the kappa coefficient) of a KBS based on D-S ToE and of an unsupervised classification (ISODATA), with relation to the CBV distribution determined for each class. This was done for the task of crop recognition in a wide heterogeneous region in Israel. It was found that while KBS performs very well in cases of conflicts and moderate support, the US classification performed well only in cases of homogeneity and uniqueness. Crop recognition by means of KBS was applied to almost one-third of the country's agricultural areas, and it provided a high level of differentiation among seven crop types, orchards and natural vegetation types. (c) 2005 Elsevier Inc. All rights reserved.
机译:基于证据的系统(KBS)使用证据推理来进行遥感影像衍生的土地覆盖制图,这种方法正在广泛传播。近年来,已发现利用Dempster-Shafer证据理论(D-S ToE)的KBS在广泛的遥感应用中最为成功,部分原因是它们具有组合各种信息源的能力。 D-S ToE的一个重要特征是,它为在每个像素处为每个对象类别积累的证据支持(信念)提供了一种度量。尽管累积信念值(CBV)在代表每个类别的支持证据与冲突证据的权重方面很重要,但其分析在文献中很少受到关注。本研究的目的是评估基于D-S ToE和非监督分类(ISODATA)的KBS的性能(以kappa系数表示),并针对每个类别确定的CBV分布。这样做是为了在以色列广泛的异质地区实现农作物识别的任务。结果发现,尽管KBS在冲突和适度支持的情况下表现良好,但US分类仅在同质性和唯一性情况下表现良好。通过KBS进行的农作物识别已应用于该国几乎三分之一的农业地区,并且在7种作物类型,果园和天然植被类型之间提供了高度的区分。 (c)2005 Elsevier Inc.保留所有权利。

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