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A comparative study of statistical and neural methods for remote-sensing image classification and decision fusion

机译:统计和神经网络方法用于遥感影像分类与决策融合的比较研究

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This paper focuses on evaluating a number of statistical and neural methods for supervised, pixel-wise remote-sensing image classification and decision fusion. Despite the enormous progress in the analysis of remote sensing imagery over the past three decades, still much is desired in the area of image classification as no specific algorithm is known to provide accurate results under all circumstances. Decision fusion may be pursued to combine the outputs of different classifiers applied on the same data, in the hope of combining the best of what each approach provides. We report the results of the comparison between several classification and fusion methods on two real datasets, one of which is the standard benchmark Satimage dataset. It is shown that the fusion approaches can indeed outperform the performance of the best classifier.
机译:本文着重评估用于监督,像素级遥感图像分类和决策融合的多种统计和神经方法。尽管在过去的三十年中在遥感影像分析方面取得了巨大的进步,但是在影像分类领域仍然有很多需求,因为还没有一种特定的算法可以在所有情况下提供准确的结果。可以寻求决策融合以组合应用于相同数据的不同分类器的输出,以期结合每种方法所提供的最佳功能。我们报告了两个真实数据集上几种分类和融合方法之间比较的结果,其中之一是标准基准Satimage数据集。结果表明,融合方法确实可以胜过最佳分类器的性能。

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