6533b835fe1ef96bd129f6fa

RESEARCH PRODUCT

Using active learning to adapt remote sensing image classifiers

William J. EmeryDevis TuiaEdoardo Pasolli

subject

Selection biasActive learningCovariate shiftPixelContextual image classificationComputer scienceImage classificationmedia_common.quotation_subjectSoil ScienceHyperspectral imagingGeologyMaximizationLand coverRemote sensingHyperspectralVHRComputers in Earth SciencesCluster analysisClassifier (UML)Remote sensingmedia_common

description

The validity of training samples collected in field campaigns is crucial for the success of land use classification models. However, such samples often suffer from a sample selection bias and do not represent the variability of spectra that can be encountered in the entire image. Therefore, to maximize classification performance, one must perform adaptation of the first model to the new data distribution. In this paper, we propose to perform adaptation by sampling new training examples in unknown areas of the image. Our goal is to select these pixels in an intelligent fashion that minimizes their number and maximizes their information content. Two strategies based on uncertainty and clustering of the data space are considered to perform active selection. Experiments on urban and agricultural images show the great potential of the proposed strategy to perform model adaptation.

10.1016/j.rse.2011.04.022https://research.wur.nl/en/publications/using-active-learning-to-adapt-remote-sensing-image-classifiers