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  4. Determination of target detection limits in hyperspectral data using band selection and dimensionality reduction
 
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2016
Conference Paper
Title

Determination of target detection limits in hyperspectral data using band selection and dimensionality reduction

Abstract
Hyperspectral remote sensing data can be used for civil and military applications to robustly detect and classify target objects. High spectral resolution of hyperspectral data can compensate for the comparatively low spatial resolution, which allows for detection and classification of small targets, even below image resolution. Hyperspectral data sets are prone to considerable spectral redundancy, affecting and limiting data processing and algorithm performance. As a consequence, data reduction strategies become increasingly important, especially in view of near-real-time data analysis. The goal of this paper is to analyze different strategies for hyperspectral band selection algorithms and their effect on subpixel classification for different target and background materials. Airborne hyperspectral data is used in combination with linear target simulation procedures to create a representative amount of target-to-background ratios for evaluation of detection limits. Data from two different airborne hyperspectral sensors, AISA Eagle and Hawk, are used to evaluate transferability of band selection when using different sensors. The same target objects were recorded to compare the calculated detection limits. To determine subpixel classification results, pure pixels from the target materials are extracted and used to simulate mixed pixels with selected background materials. Target signatures are linearly combined with different background materials in varying ratios. The commonly used classification algorithms Adaptive Coherence Estimator (ACE) is used to compare the detection limit for the original data with several band selection and data reduction strategies. The evaluation of the classification results is done by assuming a fixed false alarm ratio and calculating the mean target-to-background ratio of correctly detected pixels. The results allow drawing conclusions about specific band combinations for certain target and background combinations. Additionally, generally useful wavelength ranges are determined and the optimal amount of principal components is analyzed.
Author(s)
Gross, Wolfgang
Boehler, J.
Twizer, K.
Kedem, B.
Lenz, Andreas  
Kneubuehler, M.
Wellig, P.
Oechslin, R.
Schilling, Hendrik
Rotman, S.
Middelmann, Wolfgang  
Mainwork
Target and Background Signatures II  
Conference
Conference "Target and Background Signatures" 2016  
DOI
10.1117/12.2240931
Language
English
Fraunhofer-Institut für Optronik, Systemtechnik und Bildauswertung IOSB  
Keyword(s)
  • hyperspectral

  • detection limit

  • target-to-background ratio

  • band selection

  • target detection

  • simulation

  • dimensionality reduction

  • subpixel

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