Title :
On the Use of the Genetic Algorithm Filter-Based Feature Selection Technique for Satellite Precipitation Estimation
Author :
Mahrooghy, Majid ; Younan, Nicolas H. ; Anantharaj, Valentine G. ; Aanstoos, James ; Yarahmadian, Shantia
Abstract :
A feature selection technique is used to enhance the precipitation estimation from remotely sensed imagery using an artificial neural network (PERSIANN) and cloud classification system (CCS) method (PERSIANN-CCS) enriched by wavelet features. The feature selection technique includes a feature similarity selection method and a filter-based feature selection using genetic algorithm (FFSGA). It is employed in this study to find an optimal set of features where redundant and irrelevant features are removed. The entropy index fitness function is used to evaluate the feature subsets. The results show that using the feature selection technique not only improves the equitable threat score by almost 7% at some threshold values for the winter season, but also it extremely decreases the dimensionality. The bias also decreases in both the winter (January and February) and summer (June, July, and August) seasons.
Keywords :
atmospheric precipitation; atmospheric techniques; genetic algorithms; geophysics computing; neural nets; remote sensing; PERSIANN-CCS method; artificial neural network; cloud classification system; entropy index fitness function; filter-based feature selection technique; genetic algorithm; remotely sensed imagery; satellite precipitation estimation; summer season; winter season; Clouds; Estimation; Feature extraction; Frequency selective surfaces; Genetic algorithms; Indexes; Satellites; Clustering; feature extraction; satellite precipitation estimation (SPE); self-organizing map; unsupervised feature selection;
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2012.2187513