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A visual mining based fame work for classification accuracy estimation

机译:基于视觉挖掘的成名作品,用于分类精度估计

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Classification techniques have been widely used in different remote sensing applications and correct classification of mixed pixels is a tedious task. The problem is more complex with the classification of hyperspectral data and requires a thorough analysis. Traditional approaches adopt various statistical parameters, however does not facilitate effective visualisation. Data mining tools are proving very helpful in the classification process. We propose a visual mining based frame work for accuracy assessment of classification techniques using open source tools such as WEKA and PREFUSE. These tools in integration can provide an efficient approach for getting information about improvements in the classification accuracy and helps in refining training data set. We have illustrated frame work for investigating the effects of various resampling methods on classification accuracy and found that bilinear (BL) is best suited for preserving radiometric characteristics. We have also investigated the optimal number of folds required for effective analysis of LISS4 images.
机译:分类技术已广泛用于不同的遥感应用中,正确地混合像素分类是一项繁琐的任务。高光谱数据的分类问题更加复杂,需要进行彻底的分析。传统方法采用各种统计参数,但是不利于有效的可视化。事实证明,数据挖掘工具在分类过程中非常有帮助。我们提出了一种基于视觉挖掘的框架,用于使用WEKA和PREFUSE等开源工具对分类技术进行准确性评估。这些集成的工具可以提供一种有效的方法来获取有关分类准确性改善的信息,并有助于完善训练数据集。我们已经说明了用于研究各种重采样方法对分类准确性的影响的框架工作,并发现双线性(BL)最适合保留辐射特征。我们还研究了有效分析LISS4图像所需的最佳倍数。

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