作者
Jacob Feldman, Manish Singh
发表日期
2006/11/21
期刊
Proceedings of the National Academy of Sciences
卷号
103
期号
47
页码范围
18014-18019
出版商
National Academy of Sciences
简介
Skeletal representations of shape have attracted enormous interest ever since their introduction by Blum [Blum H (1973) J Theor Biol 38:205–287], because of their potential to provide a compact, but meaningful, shape representation, suitable for both neural modeling and computational applications. But effective computation of the shape skeleton remains a notorious unsolved problem; existing approaches are extremely sensitive to noise and give counterintuitive results with simple shapes. In conventional approaches, the skeleton is defined by a geometric construction and computed by a deterministic procedure. We introduce a Bayesian probabilistic approach, in which a shape is assumed to have “grown” from a skeleton by a stochastic generative process. Bayesian estimation is used to identify the skeleton most likely to have produced the shape, i.e., that best “explains” it, called the maximum a posteriori …
引用总数
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学术搜索中的文章
J Feldman, M Singh - Proceedings of the National Academy of Sciences, 2006