4.7 Article

A Novel Technique for Subpixel Image Classification Based on Support Vector Machine

Journal

IEEE TRANSACTIONS ON IMAGE PROCESSING
Volume 19, Issue 11, Pages 2983-2999

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIP.2010.2051632

Keywords

Fuzzy classification; hyperspectral images; multispectral images; remote sensing; subpixel classification; support vector machine

Funding

  1. Italian Ministry of Education, University, and Research (MIUR)

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This paper presents a novel support vector machine classifier designed for subpixel image classification (pixel/spectral unmixing). The proposed classifier generalizes the properties of SVMs to the identification and modeling of the abundances of classes in mixed pixels by using fuzzy logic. This results in the definition of a fuzzy-input fuzzy-output support vector machine (F-2 SVM) classifier that can: 1) process fuzzy information given as input to the classification algorithm for modeling the subpixel information in the learning phase of the classifier and 2) provide a fuzzy modeling of the classification results, allowing a relation many-to-one between classes and pixels. The presented binary F SVM can address multicategory problems according to two strategies: the fuzzy one-against-all (FOAA) and the fuzzy one-against-one (FOAO) strategies. These strategies generalize to the fuzzy case techniques based upon ensembles of binary classifiers used for addressing multicategory problems in crisp classification problems. The effectiveness of the proposed F SVM classifier is tested on three problems related to image classification in presence of mixed pixels having different characteristics. Experimental results confirm the validity of the proposed subpixel classification method.

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