Author/Authors :
Imani, Maryam Faculty of Electrical and Computer Engineering - Tarbiat Modares University Tehran, Iran , Ghassemian, Hassan Faculty of Electrical and Computer Engineering - Tarbiat Modares University Tehran, Iran
Abstract :
A fusion method for spectral-spatial classification of hyperspectral images is proposed in this paper. In the
proposed framework, at first, the dimension of hyperspectral image is reduced by several state-of-the-art spectral
feature extraction methods, i.e., Binary Coding Based Feature Extraction (BCFE), Clustering Based Feature Extraction
(CBFE), Feature Extraction Based on Ridge Regression (FERR), Feature Extraction Using Attraction Points (FEUAP),
Feature Extraction using Weighted Training samples (FEWT), and Feature Space Discriminant Analysis (FSDA).
Then, the spatial features are calculated from the spectral features extracted from each spectral feature extraction
method individually using the proposed smoothing filters and morphological operators. Finally, majority voting
decision rule is used to obtain the final classification map. The proposed framework, in addition to removing the useless
spatial information such as noise and distortions, adds useful spatial information such as shape and size of objects
presented in scene image. The use of complement information obtained from six spectral feature extraction methods
with different ideas for class discrimination, significantly improves the classification results. The proposed framework
provides in average 6.64%, 7.07%, 8.23%, 7.52% and 20.52% improvement in classification results of three real
hyperspectral images compared to generalized composite kernel (GCK), multiple feature learning (MFL), weighted
joint collaborative representation (WJCR), original hyperspectral bands stacked on extended morphological profile
(HS+EMP) and original hyperspectral bands (HS), respectively in terms of overall accuracy.
Keywords :
hyperspectral data , majority voting , classification , feature transformation , spectral-spatial features