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首页> 外文期刊>Photogrammetric Engineering & Remote Sensing: Journal of the American Society of Photogrammetry >Improved Land Cover Mapping using Random Forests Combined with Landsat Thematic IVIapper Imagery and Ancillary Geographic Data
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Improved Land Cover Mapping using Random Forests Combined with Landsat Thematic IVIapper Imagery and Ancillary Geographic Data

机译:使用随机森林与Landsat专题IVIapper影像和辅助地理数据相结合的改进的土地覆盖图

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摘要

Large area land-cover mapping involving large volumes of data is becoming more common in remote sensing applications. Thus, there is a pressing need for increased automation in the land-cover mapping process. The main objective of this research was tocompare the performance of three machine learning algorithms (mlas) for mapping wetlands in the Sanjiang Plain combined Landsat tm imagery with ancillary geographical data. Three mlas included random forest (rf), classification and regression tree (cart), and maximum likelihood classification (mlc). Comparisons were based on several criteria: overall accuracy, sensitivity to data set size, and noise. Our results indicated that first, the random forest and cart approach can achieve substantial improvements in accuracy over the traditional mlc method. Random forest produced the highest overall accuracy (91.3 percent) the kappa coefficient 0.8943, with marsh class accuracies ranging from 77.4 percent to 90.0 percent. Secondly, the random forest method was least sensitive to reduction in training sample size, and it was most resistant to the presence of noise compared to cart and mlc. The comparison between three mlas revealed that the random forest approach was most resistant to training data deficiencies while improved land-cover map accuracy in marsh area.
机译:在遥感应用中,涉及大量数据的大面积土地覆盖图正在变得越来越普遍。因此,迫切需要在土地覆盖制图过程中增加自动化。这项研究的主要目的是比较三种机器学习算法(mlas)在三江平原Landsat tm影像与辅助地理数据相结合上绘制湿地的性能。三个障碍包括随机森林(rf),分类和回归树(cart)和最大似然分类(mlc)。比较基于以下几个标准:总体准确性,对数据集大小的敏感性和噪声。我们的结果表明,首先,随机森林和手推车方法与传统的mlc方法相比,可以在准确性上取得实质性的提高。随机森林产生的最高准确度(91.3%)是卡帕系数0.8943,沼泽级别的准确度在77.4%至90.0%之间。其次,随机森林方法对减少训练样本量最不敏感,并且与cart和mlc相比,它对噪声的存在最有抵抗力。对三种情况的比较表明,随机森林方法对训练数据的缺陷最有抵抗力,而沼泽地区的土地覆盖图精度提高了。

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