Intrinsic Bayesian Active Contours for Extraction of Object Boundaries in Images

作者:Shantanu H. Joshi, Anuj Srivastava

摘要

We present a framework for incorporating prior information about high-probability shapes in the process of contour extraction and object recognition in images. Here one studies shapes as elements of an infinite-dimensional, non-linear quotient space, and statistics of shapes are defined and computed intrinsically using differential geometry of this shape space. Prior models on shapes are constructed using probability distributions on tangent bundles of shape spaces. Similar to the past work on active contours, where curves are driven by vector fields based on image gradients and roughness penalties, we incorporate the prior shape knowledge in the form of vector fields on curves. Through experimental results, we demonstrate the use of prior shape models in the estimation of object boundaries, and their success in handling partial obscuration and missing data. Furthermore, we describe the use of this framework in shape-based object recognition or classification.

论文关键词:Shape extraction, Segmentation, Bayesian shape extraction, Tangent PCA, Intrinsic shape analysis, Elastic shapes, Riemannian metric

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论文官网地址:https://doi.org/10.1007/s11263-008-0179-8