Authors:
Rania Zaatour
;
Sonia Bouzidi
and
Ezzeddine Zagrouba
Affiliation:
University of Tunis El Manar, Tunisia
Keyword(s):
Dimensionality Reduction, Principal Component Analysis (PCA), Local Fisher Discriminant Analysis (LFDA), Independent Component Analysis-based Band Selection, Extended MultiAttribute Profile (EMAP), Hyperspectral Image Classification.
Related
Ontology
Subjects/Areas/Topics:
Computer Vision, Visualization and Computer Graphics
;
Features Extraction
;
Image and Video Analysis
;
Image Formation and Preprocessing
;
Multimodal and Multi-Sensor Models of Image Formation
Abstract:
Extended multiattribute profiles (EMAPs) are morphological profiles built on the features of a HSI reduced using a Feature Extraction (FE) technique, Principal Component Analysis (PCA) in most cases. In this paper, we propose to replace PCA with other Dimensionality Reduction (DR) techniques. First, we replace it with Local Fisher Discriminant Analysis (LFDA), a supervised locality preserving DR method. Second, we replace it with two Feature Selection (FS) techniques: \textit{ICAbs}, an Independent Component Analysis (ICA) based band selection, and its modified version that we propose in this article and which we are calling \textit{mICAbs}. In the experimental part of this paper, we compare the accuracies of classifying the sparse representations of the EMAPs built on features obtained using each of the aforementioned DR techniques. Our experiments reveal that LFDA gives, amongst all, the best classification accuracies. Besides, our proposed modification gives comparable to higher a
ccuracies.
(More)