Title :
Multiple-kernel learning-based unmixing algorithm for estimation of cloud fractions with MODIS and CloudSat data
Author :
Gu, Yanfeng ; Wang, Shizhe ; Shi, Tao ; Lu, Yinghui ; Clothiaux, Eugene E. ; Yu, Bin
Author_Institution :
Dept. of Inf. Eng., Harbin Inst. of Technol., Harbin, China
Abstract :
Detection of clouds in satellite-generated radiance images, including those from MODIS, is an important first step in many applications of these data. In this paper we apply spectral unmixing to this problem with the aim of estimating subpixel cloud fractions, as opposed to identification only of whether or not a pixel radiance contains cloud contributions. We formulate the spectral unmixing approach in terms of multiple-kernel learning (MKL). To this end we propose a MKL-based unmixing algorithm that drives a multiple-kernel description of cloud, enabling estimation of sub-pixel cloud fractions. This approach is based on supervised learning. We generate training and testing samples by using CloudSat and CALIPSO data to compute cloud fractions within individual MODIS pixels. Results of our study on limited data (1875 training and testing MODIS pixels along with their CloudSat and CALIPSO based sub-pixel cloud fractions) show that the proposed algorithm can effectively estimate sub-pixel MODIS cloud fraction and outperforms support vector machine (SVM) in terms of estimation performance.
Keywords :
clouds; geophysical image processing; learning (artificial intelligence); object detection; remote sensing; CALIPSO data; CloudSat data; MKL based unmixing algorithm; MODIS data; cloud detection; multiple kernel learning; satellite generated radiance images; spectral unmixing algorithm; spectral unmixing approach; subpixel cloud fraction estimation; Clouds; Estimation; Kernel; MODIS; Support vector machines; Training; Vectors; Cloud detection; MODIS; multiple-kernel learning (MKL); spectral unmixing;
Conference_Titel :
Geoscience and Remote Sensing Symposium (IGARSS), 2012 IEEE International
Conference_Location :
Munich
Print_ISBN :
978-1-4673-1160-1
Electronic_ISBN :
2153-6996
DOI :
10.1109/IGARSS.2012.6351167