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Exploration of Multispectral Image Data

Background: 

Multi- and Hyperspectral imaging allows the acquisition of image series of a specified wavelength range. Those image series can be regarded as high-dimensional image cubes with large density of spectral information. Due to the high-dimensionality of multispectral image data and the associated complexity, the interpretation of these data is a major challenge for humans and time-consuming for computers. Moreover, recent developments in sensor technologies will lead to increasing spatial and spectral resolutions. Accordingly, there is the need of a system that allows a user to explore the data in an efficient and intuitive way to facilitate the interpretation and consequently to improve the understanding.

Beside the challenge of high-dimensonality, these imaging techniques have been applied in a growing number of application areas and are getting increasingly popular in further application domains. The increasing popularity requires tools for analyzing and processing of multi- and hyperspectral data in a generic way to ensure that important informations can be extracted also for new application domains.

In the context of this research direction, we focuses on the development of efficient visual analysis techniques for multi- and hyperpsectral data. Here, one of the major goals is the determination of the constituent spectra and the exploration of mixed spectra to gain comprehensive insights to spectral data.

This research project is funded by the German Research Foundation (DFG) as part of the research training group GRK 1564 'Imaging New Modalities'.

Publications: 


2013

Begutachtete Konferenzbeiträge

[bib] - B. Labitzke, A. Kolb - Efficient and Accurate Linear Spectral Unmixing
In IEEE Workshop on Hyperspectral Imaging and Signal Processing: Evolution in Remote Sensing (Whispers), 2013

2012

Artikel in Zeitschriften

[bib] - B. Labitzke, S. Bayraktar, A. Kolb - Generic Visual Analysis for Multi- and Hyperspectral Data
In Data Mining and Knowledge Discovery, Special Issue: Intelligent Data Visualization, 2012, pages 117-145 - [pdf]

2011

Buchbeiträge

[bib] - J. Bader , B. Labitzke , M. Grzegorzek , A. Kolb - Multispectral Pattern Recognition Techniques for Biometrics
In Biometrics, Faculty of Biomedical Engineering, Silesian University of Technology, 2011, pages 87--116

Begutachtete Konferenzbeiträge

[bib] - M. Strickert, B. Labitzke, A. Kolb, T. Villmann - Multispectral image characterization by partial generalized covariance
In European Symp. on Artificial Neural Networks, Computational Intelligence and Machine Learning, i6doc.com publ., 2011, pages 105-110 - [pdf]

Begutachtete Konferenzbeiträge

[bib] - M. Strickert, B. Labitzke, V. Blanz - Partial generalized correlation for hyperspectral data
In IEEE Symposium on Computational Intelligence and Data Mining, 2011, pages 325-330