DocumentCode :
1526031
Title :
An Adaptive Approach for the Progressive Integration of Spatial and Spectral Features When Training Ground-Based Hyperspectral Imaging Classifiers
Author :
Prieto, Abraham ; Bellas, Francisco ; Duro, Richard J. ; López-Peña, Fernando
Author_Institution :
Integrated Group for Eng. Res., Univ. of La Coruna, Ferrol, Spain
Volume :
59
Issue :
8
fYear :
2010
Firstpage :
2083
Lastpage :
2093
Abstract :
The use of hyperspectrometers as analytical tools for determining surface material properties in ground-based applications introduces the need of integrating spatial and spectral hyperspectral cube components. A neural-network-based approach is presented in this paper with the aim of automatically adapting to the spatiospectral characteristics of samples in a problem domain so that the most efficient classification can be obtained. Its main application would be in inspection and quality control tasks. The system core is an Artificial Neural Network-based hyperspectral processing unit able to perform the online classification of the material based on the spatiospectral patterns provided by a set of pixels. A training adviser is implemented to automate the determination of the minimum spatial window size, as well as the optimum spectrospatial feature set leading to the desired classification in terms of the available ground truth. Several tests have been carried out on synthetic and real data sets. In particular, the proposed approach is used to discriminate samples of synthetic and real materials, where the pixel resolution implies that a material is characterized by spectral patterns of combinations of pixels.
Keywords :
image classification; learning (artificial intelligence); neural nets; spectrometers; ground based hyperspectral imaging classifier training; hyperspectral processing; hyperspectrometers; neural network; spatial hyperspectral cube component; spectral hyperspectral cube component; surface material property; Artificial neural networks; classification; hyperspectral images; material discrimination;
fLanguage :
English
Journal_Title :
Instrumentation and Measurement, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9456
Type :
jour
DOI :
10.1109/TIM.2009.2030872
Filename :
5497147
Link To Document :
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