K-NN FOREST: A software for the non-parametric prediction and mapping of environmental variables by the k-Nearest Neighbors algorithm

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Abstract

In the last decades researchers investigated the possibility of extending the information collected in sampling units during a field survey to wider geographical areas through the use of remotely sensed images. One of the most widely adopted approaches is based on the non-parametric k-Nearest Neighbors (k-NN) algorithm. This contribution describes the software K-NN FOREST we developed to provide a complete tool for the implementation of the k-NN technique to generate spatially explicit estimations (maps) of a response variable acquired in the field by sampling units through the use of remotely sensed data or other ancillary variables. K-NN FOREST is designed to guide the user through a graphic user interface in the different phases of the process. K-NN FOREST is freely available for download and it is designed to run under Windows environment in conjunction with the GIS software IDRISI.

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Chirici, G., Corona, P., Marchetti, M., Mastronardi, A., Maselli, F., Bottai, L., & Travaglini, D. (2012). K-NN FOREST: A software for the non-parametric prediction and mapping of environmental variables by the k-Nearest Neighbors algorithm. European Journal of Remote Sensing, 45(1), 433–442. https://doi.org/10.5721/EuJRS20124536

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