1. A meta-analysis and review of the literature on the k-Nearest Neighbors technique for forestry applications that use remotely sensed data
- Author
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Gherardo Chirici, Daniel McInerney, Davide Travaglini, Matteo Mura, Lars T. Waser, Erkki Tomppo, Nicolas Py, and Ronald E. McRoberts
- Subjects
010504 meteorology & atmospheric sciences ,Computer science ,0211 other engineering and technologies ,Soil Science ,Geology ,Forestry ,02 engineering and technology ,Scientific literature ,computer.software_genre ,01 natural sciences ,Field (geography) ,k-nearest neighbors algorithm ,Ancillary data ,Meta-analysis ,Satellite imagery ,Cost action ,Data mining ,Computers in Earth Sciences ,State of the science ,computer ,021101 geological & geomatics engineering ,0105 earth and related environmental sciences ,Remote sensing - Abstract
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.
- Published
- 2016
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