Title :
Improving the performance of classifiers in high-dimensional remote sensing applications: an adaptive resampling strategy for error-prone exemplars (ARESEPE)
Author :
Bachmann, Charles M.
Author_Institution :
Remote Sensing Div., Naval Res. Lab., Washington, DC, USA
Abstract :
In the past, "active learning" strategies have been proposed for improving the convergence and accuracy of statistical classifiers. However, many of these approaches have large storage requirements or unnecessarily large computational burdens and, therefore, have been impractical for the large-scale databases typically found in remote sensing, especially hyperspectral applications. In this paper, we develop a practical on-line approach with only modest storage requirements. The new approach improves the convergence rate associated with the optimization of adaptive classifiers, especially in high-dimensional remote sensing data. We demonstrate the new approach using PROBE2 hyperspectral imagery and find convergence time improvements of two orders of magnitude in the optimization of land-cover classifiers.
Keywords :
image classification; image sampling; remote sensing; sampling methods; ARESEPE; PROBE2 hyperspectral imagery; Virginia Coast Reserve; active learning strategies; active sampling; adaptive resampling strategy for error-prone exemplars; barrier islands; convergence rate; high-dimensional remote sensing applications; hyperspectral applications; land-cover classification; land-cover classifiers; large-scale databases; statistical classifiers; storage requirements; Algorithm design and analysis; Convergence; High performance computing; Hyperspectral imaging; Hyperspectral sensors; Large-scale systems; Remote sensing; Sampling methods; Stochastic processes; Vector quantization;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2003.817207