شماره ركورد كنفرانس :
144
عنوان مقاله :
Hyperspectral Spatial-Spectral Feature Classification Based on Adequate Adaptive Segmentation
پديدآورندگان :
Borhani Mostafa نويسنده , Ghassemian Hassan نويسنده
كليدواژه :
Remote sensing , Expectation maximization (EM) , Hyperspectral images , hierarchical segmentation
عنوان كنفرانس :
مجموعه مقالات دوازدهمين كنفرانس سيستم هاي هوشمند ايران
چكيده فارسي :
This paper proposes some novel classification scheme
based on adaptive spatial vicinity for hyperspectral remote
sensed images. Different segmentation methods such as Robust
Color Morphological Gradient (RCMG), Expectation
Maximization (EM) and Recursive Hierarchical Segmentation
(RHSEG) have been generalized to hyperspectral image analysis
and their extensions; Hyperspectral Robust Color Morphological
Gradient (HRCMG), Adequate Expectation Maximization
(AEM) and Hyperspectral Recursive Hierarchical Image
Segmentation (HRHSEG) were introduced and applied in the
empirical implementation. Experiments were based on two
available hyperspectral data sets (Indiana Pines and Hekla).
Experimental results were compared with three analysis
measurements (overall accuracy, average accuracy and Kappa
factor) as well as their classification maps with pixelwise methods
and some previous spatial-spectral approaches such as EMP and
ECHO. All of the quantitate quality measures of proposed
method were better than other reviewed approaches, but the
classification map of proposed approach is so artificial in some
cases. The novel segmentation methods (HRCMG, AEM and
HRHSEG) are applied, and the accuracy was improved in
compare with elder schemes, when the median voting scheme is
employed
شماره مدرك كنفرانس :
3817034