In this paper, we address automatic updating of land-cover maps by using multitemporal images without a complete knowledge of training data. In particular, two main novel contributions are proposed: a progressive partially-supervised support vector machine (P2S2VM) technique that extends the SVM method to the partially-supervised classification framework; ii) a circular accuracy assessment strategy for the validation of the learning of the classifier when no labeled test samples are available. Experimental results obtained on a multitemporal and multispectral data set confirmed the effectiveness and the reliability of both the proposed P 2S2VM technique and the related circular validation strategy. © 2007 IEEE.
Partially-Supervised Updating of Land-Cover Maps: a P2S2VM Technique and a Circular Validation Strategy
Marconcini, Mattia;Bruzzone, Lorenzo
2007-01-01
Abstract
In this paper, we address automatic updating of land-cover maps by using multitemporal images without a complete knowledge of training data. In particular, two main novel contributions are proposed: a progressive partially-supervised support vector machine (P2S2VM) technique that extends the SVM method to the partially-supervised classification framework; ii) a circular accuracy assessment strategy for the validation of the learning of the classifier when no labeled test samples are available. Experimental results obtained on a multitemporal and multispectral data set confirmed the effectiveness and the reliability of both the proposed P 2S2VM technique and the related circular validation strategy. © 2007 IEEE.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione



