Title :
On the Use of a Cluster Ensemble Cloud Classification Technique in Satellite Precipitation Estimation
Author :
Mahrooghy, Majid ; Younan, Nicolas H. ; Anantharaj, Valentine G. ; Aanstoos, James ; Yarahmadian, Shantia
Author_Institution :
Dept. of Electr. Eng., Mississippi State Univ., Starkville, MS, USA
Abstract :
In this paper, the link-based cluster ensemble (LCE) method is utilized to improve cloud classification and satellite precipitation estimation. High resolution Satellite Precipitation Estimation (SPE) is based on the Precipitation Estimation from Remotely Sensed Imagery using an Artificial Neural Network Cloud Classification (PERSIANN-CCS) algorithm. This modified SPE with the incorporation of LCE involves the following four steps: 1) segmentation of infrared cloud images into patches; 2) cloud patch feature extraction; 3) clustering cloud patches using LCE; and 4) dynamic application of brightness temperature (Tb) and rain-rate relationships, derived using satellite observations. In order to cluster the cloud patches, the LCE method combines multiple data partitions from different clustering methods. The results show that using the cluster ensemble increases the performance of rainfall estimates compared to the SPE algorithm using a Self Organizing Map (SOM) neural network. The false alarm ratio (FAR), probabilities of detection (POD), equitable threat score (ETS), and bias are used as quantitative measures to assess the performance of the algorithm. It is shown that both the ETS and bias provide improvement in the summer and winter seasons. Almost 5% ETS improvement is obtained at some threshold values for the winter season using the cluster ensemble.
Keywords :
atmospheric techniques; clouds; geophysical image processing; geophysics computing; image classification; neural nets; rain; remote sensing; self-organising feature maps; LCE method; PERSIANN-CCS algorithm; SOM neural network; Self Organizing Map; artificial neural network cloud classification; brightness temperature dynamic application; cloud patch feature extraction; cluster ensemble cloud classification technique; clustering cloud patches; equitable threat score; false alarm ratio; infrared cloud image segmentation; link-based cluster ensemble; multiple data partitions; probabilities-of-detection; rain-rate relationships; remotely sensed imagery; satellite precipitation estimation; summer season; winter season; Clouds; Clustering algorithms; Clustering methods; Estimation; Heuristic algorithms; Remote sensing; Satellites; Cluster ensemble; feature extraction; satellite precipitation estimation; self organizing map;
Journal_Title :
Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of
DOI :
10.1109/JSTARS.2012.2201449