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Multisource classification of remotely sensed data: fusion of Landsat TM and SAR images

机译:遥感数据的多源分类:Landsat TM和SAR图像的融合

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Proposes a new method for statistical classification of multisource data. The method is suited for land-use classification based on the fusion of remotely sensed images of the same scene captured at different dates from multiple sources. It incorporates a priori information about the likelihood of changes between the acquisition of the different images to be fused. A framework for the fusion of remotely sensed data based on a Bayesian formulation is presented. First, a simple fusion model is given, and then the basic model is extended to take into account the temporal attribute if the different data sources are acquired at different dates. The performance of the model is evaluated by fusing Landsat TM images and ERS-1-SAR images for land-use classification. The fusion model gives significant improvements in the classification error rates compared to the conventional single-source classifiers.
机译:提出了一种多源数据统计分类的新方法。该方法适用于基于融合从多个来源在不同日期捕获的同一场景的遥感图像的土地利用分类。它合并了有关要融合的不同图像的获取之间变化的可能性的先验信息。提出了一种基于贝叶斯公式融合遥感数据的框架。首先,给出一个简单的融合模型,然后扩展基本模型以考虑到时间属性,如果在不同日期获取了不同的数据源。通过将Landsat TM图像和ERS-1-SAR图像融合以进行土地利用分类,可以评估模型的性能。与传统的单源分类器相比,融合模型显着改善了分类错误率。

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