A Large Margin Learning Method for Matching Images of Natural Objects with Different Dimensions

Author:

Zhou Haoyi1,Zhou Jun2,Yang Haichuan1,Yan Cheng1,Bai Xiao1,Liu Yunlu1

Affiliation:

1. Beihang University, China

2. School of Information and Communication Technology, Griffith University, Australia

Abstract

Imaging devices are of increasing use in environmental research requiring an urgent need to deal with such issues as image data, feature matching over different dimensions. Among them, matching hyperspectral image with other types of images is challenging due to the high dimensional nature of hyperspectral data. This chapter addresses this problem by investigating structured support vector machines to construct and learn a graph-based model for each type of image. The graph model incorporates both low-level features and stable correspondences within images. The inherent characteristics are depicted by using a graph matching algorithm on extracted weighted graph models. The effectiveness of this method is demonstrated through experiments on matching hyperspectral images to RGB images, and hyperspectral images with different dimensions on images of natural objects.

Publisher

IGI Global

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