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首页> 外文期刊>International Journal of Computer Vision >Prior Knowledge, Level Set Representations & Visual Grouping
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Prior Knowledge, Level Set Representations & Visual Grouping

机译:先验知识,水平集表示和可视分组

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摘要

In this paper, we propose a level set method for shape-driven object extraction. We introduce a voxel-wise probabilistic level set formulation to account for prior knowledge. To this end, objects are represented in an implicit form. Constraints on the segmentation process are imposed by seeking a projection to the image plane of the prior model modulo a similarity transformation. The optimization of a statistical metric between the evolving contour and the model leads to motion equations that evolve the contour toward the desired image properties while recovering the pose of the object in the new image. Upon convergence, a solution that is similarity invariant with respect to the model and the corresponding transformation are recovered. Promising experimental results demonstrate the potential of such an approach.
机译:在本文中,我们提出了一种用于形状驱动对象提取的水平集方法。我们介绍了体素明智的概率水平集公式,以说明先验知识。为此,对象以隐式形式表示。通过寻找对相似模型进行模转换的先验模型的图像平面的投影来施加对分割过程的约束。在不断发展的轮廓和模型之间的统计度量的优化导致运动方程,该运动方程使轮廓向着所需的图像特性发展,同时恢复了新图像中对象的姿态。收敛后,将恢复相对于模型不变的解决方案以及相应的变换。有希望的实验结果证明了这种方法的潜力。

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