شماره ركورد كنفرانس :
144
عنوان مقاله :
Hyperspectral Image Classification Based on Non-Uniform Spatial-Spectral Kernels
پديدآورندگان :
Borhani Mostafa نويسنده , Ghassemian Hassan نويسنده
كليدواژه :
Hyperspectral image classification , non-uniform distribution information , Bhattacharyya distance , SVM , the Mutual Information , spatial Markov Random Fields energy function
عنوان كنفرانس :
مجموعه مقالات دوازدهمين كنفرانس سيستم هاي هوشمند ايران
چكيده فارسي :
In this paper, several criteria to measure the nonuniform
distribution of the spatial-spectral information were
investigated in hyperspectral remotely sensed images, then a
novel weighted spatial- spectral kernel is introduced. They are
proportional to combined (linear / constrained linear and
nonlinear) distance measures. Then, the extracted weight vector
is applied to both spatial and spectral features. Several spectralspatial
distance criterion including Bhattacharyya distance, the
Mutual Information (MI), Spectral Angle Mapper (SAM) and the
spatial Markov Random Fields (MRF) energy function are
calculated and used in the SVM kernel design. Their combination
with three aspects (Linear, constrained linear and nonlinear)
regard to convex convergence conditions are examined. The
proposed method was implemented for spatial-spectral kernel
design. For performance evaluation we used, the data set of
Indiana Pines with 190 spectral bands. Comparison of average
accuracy, overall accuracy and Kappa coefficient of classification
are presented along with class-maps. Experimental results
achieved better accuracy and reliability, particularly in terms of
limited training samples, in comparison to some classification
methods (ECHO and EMP).
شماره مدرك كنفرانس :
3817034