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Data Fusion Approach for Employing Multiple Classifiers to Improve Lake Shoreline Analysis

机译:采用多个分类器的数据融合方法以改善湖岸线分析

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Remote sensing images have been widely employed to analyze bodies of water and have become essential to studying their dynamics. While the use of indices based on the threshold segmentation technique is preferred, the search for methods that define water edge contour continues. The segmentation algorithm introduced in this study is based on Mean-Shift and Watershed methods. We propose a fusion classifier strategy which allows us to obtain results that are consistent with the segmentation process. The use of two or more segmentation processes has been shown to improve pattern recognition. It is important to implement a good data integration scheme. Preliminary results suggest that the approach reported herein can improve the definition of lake shorelines.
机译:遥感图像已被广泛用于分析水体,并已成为研究其动态的必要条件。虽然最好使用基于阈值分割技术的索引,但继续搜索定义水边缘轮廓的方法。本研究引入的分割算法基于均值漂移和分水岭方法。我们提出了一种融合分类器策略,该策略可让我们获得与分割过程一致的结果。已经证明使用两个或多个分割过程可以改善模式识别。重要的是要实现良好的数据集成方案。初步结果表明,本文报道的方法可以改善湖岸线的定义。

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