@inproceedings{4e5c8cfb4647483eb045eef3c5422a44,
title = "Multifractal estimation for remote sensing image segmentation",
abstract = "Multifractal analysis can successfully characterize the roughness and self-similarity of textural images. But most popular methods produce less accurate results. In this paper, a novel multifractal estimation algorithm based on mathematical morphology is proposed and a set of new multifractal features, namely the local morphological multifractal exponents (LMME) is defined. A series of cubic Structure Elements (SE) and iterative morphological operations are utilized so that the computational complexity of the new approach can be tremendously reduced. A quadtree-based multilevel segmentation algorithm is also developed to efficiently apply the presented multifractal features to image segmentation. Both the proposed approach and the box-counting based methods have been assessed on real remote sensing images. The comparison results demonstrate that the morphological multifractal estimation can differentiate texture images more effectively and provide a more robust segmentation result.",
keywords = "Image segmentation, Mathematical morphology, Multifractal estimation",
author = "Yong Xia and Zhao, {Rong Chun} and Feng, {David D.}",
year = "2004",
language = "英语",
isbn = "0780384075",
series = "2004 7th International Conference on Signal Processing Proceedings, ICSP",
pages = "775--778",
booktitle = "2004 7th International Conference on Signal Processing Proceedings, ICSP",
note = "2004 7th International Conference on Signal Processing Proceedings, ICSP ; Conference date: 31-08-2004 Through 04-09-2004",
}