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A meta-analysis and review of the literature on the k-Nearest Neighbors technique for forestry applications that use remotely sensed data

机译:对使用遥感数据的林业应用的k最近邻技术文献进行的荟萃分析和评论

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摘要

The k-Nearest Neighbors (k-NN) technique is a popular method for producing spatially contiguous predictions of forest attributes by combining field and remotely sensed data. In the framework of Working Group 2 of COST Action FP1001, we reviewed the scientific literature for forestry applications of k-NN. Information available in scientific publications on this topic was used to populate a database that was then used as the basis for a meta analysis. We extracted qualitative and quantitative information from 260 experimental tests described in 148 scientific papers. The papers represented a geographic range of 26 countries and a temporal range from 1981 to 2013. Firstly, we describe the literature search and the information extracted and analyzed. Secondly, we report the results of the meta-analysis, especially with respect to estimation accuracies reported for k-NN applications for different configurations, different forest environments, and different input information. We also provide a summary of results that may reasonably be expected for those planning a k-NN application using remotely sensed data from different sensors and for different forest attributes. Finally, we identify some methodological publications that have advanced the state of the science with respect to k-NN. (C) 2016 Elsevier Inc. All rights reserved.
机译:k最近邻(k-NN)技术是一种流行的方法,可以通过组合野外数据和遥感数据来生成森林属性的空间连续预测。在COST行动FP1001的第2工作组的框架中,我们回顾了k-NN在林业方面的科学文献。科学出版物中有关此主题的可用信息用于填充数据库,然后该数据库用作元分析的基础。我们从148篇科学论文中描述的260项试验中提取了定性和定量信息。这些论文代表了26个国家的地理范围和1981年至2013年的时间范围。首先,我们描述了文献检索以及提取和分析的信息。其次,我们报告了荟萃分析的结果,特别是针对针对不同配置,不同森林环境和不同输入信息的k-NN应用报告的估计准确性。我们还提供了对使用来自不同传感器的遥感数据以及不同森林属性来计划k-NN应用程序的人员可能合理预期的结果的摘要。最后,我们确定了一些方法论方面的出版物,这些出版物在k-NN方面已取得了科学进展。 (C)2016 Elsevier Inc.保留所有权利。

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