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Exploiting Information Geometry to Improve the Convergence of Nonparametric Active Contours

机译:利用信息几何提高非参数活动轮廓的收敛性

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This paper presents a fast converging Riemannian steepest descent method for nonparametric statistical active contour models, with application to image segmentation. Unlike other fast algorithms, the proposed method is general and can be applied to any statistical active contour model from the exponential family, which comprises most of the models considered in the literature. This is achieved by first identifying the intrinsic statistical manifold associated with this class of active contours, and then constructing a steepest descent on that manifold. A key contribution of this paper is to derive a general and tractable closed-form analytic expression for the manifold’s Riemannian metric tensor, which allows computing discrete gradient flows efficiently. The proposed methodology is demonstrated empirically and compared with other state of the art approaches on several standard test images, a phantom positron-emission-tomography scan and a B-mode echography of in-vivo human dermis.
机译:本文提出了一种用于非参数统计主动轮廓模型的快速收敛黎曼最速下降方法,并将其应用于图像分割。与其他快速算法不同,所提出的方法是通用的,可以应用于指数族的任何统计活动轮廓模型,该模型包括文献中考虑的大多数模型。这是通过首先确定与此类活动轮廓关联的固有统计流形,然后在该流形上构造最陡的下降来实现的。本文的主要贡献是为流形的黎曼度量张量导出一个通用且易于处理的闭式解析表达式,该表达式可以有效地计算离散梯度流。实验证明了所提出的方法,并与其他标准测试图像,体模正电子发射体层摄影术扫描和体内人真皮的B型回波描记术进行了比较。

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