Title of article :
Evolutionary feature selection to estimate forest stand variables using LiDAR
Author/Authors :
Garcia-Gutierrez، نويسنده , , Jorge and Gonzalez-Ferreiro، نويسنده , , Eduardo and Riquelme-Santos، نويسنده , , Jose C. and Miranda، نويسنده , , David and Dieguez-Aranda، نويسنده , , Ulises and Navarro-Cerrillo، نويسنده , , Rafael M.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Pages :
13
From page :
119
To page :
131
Abstract :
Light detection and ranging (LiDAR) has become an important tool in forestry. LiDAR-derived models are mostly developed by means of multiple linear regression (MLR) after stepwise selection of predictors. An increasing interest in machine learning and evolutionary computation has recently arisen to improve regression use in LiDAR data processing. Although evolutionary machine learning has already proven to be suitable for regression, evolutionary computation may also be applied to improve parametric models such as MLR. This paper provides a hybrid approach based on joint use of MLR and a novel genetic algorithm for the estimation of the main forest stand variables. We show a comparison between our genetic approach and other common methods of selecting predictors. The results obtained from several LiDAR datasets with different pulse densities in two areas of the Iberian Peninsula indicate that genetic algorithms perform better than the other methods statistically. Preliminary studies suggest that a lack of parametric conditions in field data and possible misuse of parametric tests may be the main reasons for the better performance of the genetic algorithm. This research confirms the findings of previous studies that outline the importance of evolutionary computation in the context of LiDAR analisys of forest data, especially when the size of fieldwork datatasets is reduced.
Keywords :
LIDAR , Regression , Stepwise selection , Evolutionary Computation , Forest-stand variables
Journal title :
International Journal of Applied Earth Observation and Geoinformation
Serial Year :
2014
Journal title :
International Journal of Applied Earth Observation and Geoinformation
Record number :
2379432
Link To Document :
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