Title :
Combine labeled and unlabeled information for hyperspectral image classification
Author :
Qian Du ; Deok Han ; Younan, Nicolas H.
Author_Institution :
Dept. of Electr. & Comput. Eng., Mississippi State Univ., Starkville, MS, USA
Abstract :
In hyperspectral image classification, semisupervised learning can be applied when labeled samples are limited. By utilizing unlabeled information, classification accuracy generally can be improved. Graph-based regularization is a widely used semisupervised learning technique, where graph construction with both labeled and unlabeled samples is very computationally expensive. In reality, samples are highly correlated; so it may be unnecessary to use all the unlabeled samples. Appropriate selection of unlabeled samples can not only help improve classification but also significantly reduce the computational cost. In this paper, we propose an unlabeled sample selection algorithm. The preliminary result from a semisupervised graph-regularized kernel classifier demonstrates its effectiveness.
Keywords :
geophysical image processing; graph theory; hyperspectral imaging; image classification; learning (artificial intelligence); computational cost reduction; graph construction; hyperspectral image classification accuracy; semisupervised graph regularized kernel classifier; semisupervised learning technique; unlabeled information; unlabeled sample selection algorithm; Accuracy; Hyperspectral imaging; Image classification; Kernel; Semisupervised learning; Support vector machines; graph regularization; hyperspectral image classification; pixel selection; semisupervised learning;
Conference_Titel :
Geoscience and Remote Sensing Symposium (IGARSS), 2013 IEEE International
Conference_Location :
Melbourne, VIC
Print_ISBN :
978-1-4799-1114-1
DOI :
10.1109/IGARSS.2013.6723350