Title :
Unsupervised Amplitude and Texture Classification of SAR Images With Multinomial Latent Model
Author :
Kayabol, Koray ; Zerubia, Josiane
Author_Institution :
Istanbul Tech. Univ., Istanbul, Turkey
Abstract :
In this paper, we combine amplitude and texture statistics of the synthetic aperture radar images for the purpose of model-based classification. In a finite mixture model, we bring together the Nakagami densities to model the class amplitudes and a 2-D auto-regressive texture model with t-distributed regression error to model the textures of the classes. A non-stationary multinomial logistic latent class label model is used as a mixture density to obtain spatially smooth class segments. The classification expectation-maximization algorithm is performed to estimate the class parameters and to classify the pixels. We resort to integrated classification likelihood criterion to determine the number of classes in the model. We present our results on the classification of the land covers obtained in both supervised and unsupervised cases processing TerraSAR-X, as well as COSMO-SkyMed data.
Keywords :
autoregressive processes; expectation-maximisation algorithm; image classification; image texture; radar imaging; synthetic aperture radar; 2D autoregressive texture model; COSMO-SkyMed data; Nakagami densities; SAR images; TerraSAR-X; amplitude statistics; expectation-maximization algorithm; finite mixture model; integrated classification likelihood criterion; land covers; mixture density; nonstationary multinomial logistic latent class label model; spatially smooth class segments; supervised cases; synthetic aperture radar images; texture classification; texture statistics; unsupervised amplitude classification; Adaptation models; Classification algorithms; Hidden Markov models; Image resolution; Image segmentation; Logistics; Synthetic aperture radar; COSMO-SkyMed; Classification; Jensen–Shannon criterion; TerraSAR-X; classification expectation-maximization (CEM); high resolution synthetic aperture radar (SAR); multinomial logistic; texture;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2012.2219545