#56:
S. Nath and
K. Palaniappan
Lecture Notes in Computer Science (ISVC),
Volume 3804,
pgs. 445--453,
2005
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Recently, Van Den Boomgaard and Van De Weijer have pre- sented an algorithm for texture analysis using robust tensor-based esti- mation of orientation. Structure tensors are a useful tool for reliably esti- mating oriented structures within a neighborhood and in the presence of noise. In this paper, we extend their work by using the Geman-McClure robust error function and, developing a novel iterative scheme that adap- tively and simultaneously, changes the size, orientation and weighting of the neighborhood used to estimate the local structure tensor. The itera- tive neighborhood adaptation is initialized using the total least-squares solution for the gradient using a relatively large isotropic neighborhood. Combining our novel region adaptation algorithm, with a robust tensor formulation leads to better localization of low-level edge and junction image structures in the presence of noise. Preliminary results, using syn- thetic and biological images are presented.
@article{Nath:ISVC-2005,
author = "S. Nath and K. Palaniappan",
title = "Adaptive robust structure tensors for orientation estimation and image segmentation",
year = 2005,
journal = "Lecture Notes in Computer Science (ISVC)",
volume = 3804,
pages = "445--453",
keywords = "image enhancement, features, detection, segmentation, denoising, convex relaxation",
doi = "10.1007/11595755_54"
}
S. Nath and K. Palaniappan. Adaptive robust structure tensors for orientation estimation and image segmentation. Lecture Notes in Computer Science (ISVC), volume 3804, pages 445--453, 2005.