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首页> 外文期刊>International Journal of Computer Vision >A multiphase dynamic labeling model for variational recognition-driven image segmentation
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A multiphase dynamic labeling model for variational recognition-driven image segmentation

机译:用于变分识别驱动的图像分割的多阶段动态标记模型

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摘要

We propose a variational framework for the integration of multiple competing shape priors into level set based segmentation schemes. By optimizing an appropriate cost functional with respect to both a level set function and a (vector-valued) labeling function, we jointly generate a segmentation (by the level set function) and a recognition-driven partition of the image domain (by the labeling function) which indicates where to enforce certain shape priors. Our framework fundamentally extends previous work on shape priors in level set segmentation by directly addressing the central question of where to apply which prior. It allows for the seamless integration of numerous shape priors such that-while segmenting both multiple known and unknown objects-the level set process may selectively use specific shape knowledge for simultaneously enhancing segmentation and recognizing shape.
机译:我们提出了一种变体框架,用于将多个竞争形状先验集成到基于水平集的分割方案中。通过针对级别集函数和(向量值)标记函数优化适当的成本函数,我们共同生成分割(通过级别集函数)和图像域的识别驱动分区(通过标记)函数),以指示在何处强制执行某些形状先验。我们的框架从根本上扩展了在水平集分割中关于形状先验的先前工作,方法是直接解决在哪里应用哪个先验的核心问题。它允许无缝整合多个形状先验,以便在分割多个已知和未知对象的同时,水平设置过程可以有选择地使用特定形状知识来同时增强分割和识别形状。

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