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The use of decision tree and multiscale texture for classification of JERS-1 SAR data over tropical forest

机译:决策树和多尺度纹理在热带森林JERS-1 SAR数据分类中的应用

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The objective of this paper is to study the use of a decision tree classifier and multiscale texture measures to extract thematic information on the tropical vegetation cover from the Global Rain Forest Mapping (GRFM) JERS-1 SAR mosaics. The authors focus their study on a coastal region of Gabon, which has a variety of land cover types common to most tropical regions. A decision tree classifier does not assume a particular probability density distribution of the input data, and is thus well adapted for SAR image classification. A total of seven features, including wavelet-based multiscale texture measures (at scales of 200, 400, and 800 m) and multiscale multitemporal amplitude data (two dates at scales 100 and 400 m), are used to discriminate the land cover classes of interest. Among these layers, the best features for separating classes are found by constructing exploratory decision trees from various feature combinations. The decision tree structure stability is then investigated by interchanging the role of the training samples for decision tree growth and testing. They show that the construction of exploratory decision trees can improve the classification results. The analysis also proves that the radar backscatter amplitude is important for separating basic land cover categories such as savannas, forests, and flooded vegetation. Texture is found to be useful for refining flooded vegetation classes. Temporal information from SAR images of two different dates is explicitly used in the decision tree structure to identify swamps and temporarily flooded vegetation.
机译:本文的目的是研究使用决策树分类器和多尺度纹理度量从全球雨林测绘(GRFM)JERS-1 SAR马赛克中提取有关热带植被覆盖的专题信息。作者将研究重点放在加蓬沿海地区,该地区具有大多数热带地区常见的多种土地覆盖类型。决策树分类器不假设输入数据的特定概率密度分布,因此非常适合SAR图像分类。总共使用了七个特征,包括基于小波的多尺度纹理量度(分别在200、400和800 m的尺度上)和多尺度的多时相振幅数据(两个在100和400 m的尺度上的日期)来区分土地覆盖类型。利益。在这些层中,通过从各种特征组合构造探索性决策树可以找到用于分离类的最佳特征。然后通过互换训练样本对决策树的增长和测试的作用来研究决策树的结构稳定性。他们表明,探索性决策树的构建可以改善分类结果。分析还证明,雷达反向散射幅度对于分离基本土地覆盖类别(例如稀树草原,森林和水淹植被)非常重要。发现纹理对于完善淹没的植被类别很有用。来自两个不同日期的SAR图像的时间信息明确地用于决策树结构中,以识别沼泽和临时淹没的植被。

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