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Invariant Shape Prior Knowledge for an Edge-based Active Contours Invariant Shape Prior for Active Contours

机译:在活动轮廓之前,不变的形状对基于边缘的主动轮廓不变形状的知识

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In this paper, we intend to propose a new method to incorporate geometric shape prior into an edge-based active contours for robust object detection in presence of partial occlusions, low contrast and noise. A shape registration method based on phase correlation of binary images, associated with level set functions of the active contour and a reference shape, is used to define prior knowledge making the model invariant with respect to Euclidean transformations. In case of several templates, a set of complete invariant shape descriptors is used to select the most suitable one according to the evolving contour. Experimental results show the ability of the proposed approach to constrain an evolving curve towards a target shapes that may be occluded and cluttered under rigid transformations.
机译:在本文中,我们打算提出一种新方法,以在存在部分闭塞,低对比度和噪声的存在下以鲁棒对象检测将几何形状纳入基于边缘的主动轮廓。基于二进制图像的相位相关性的形状登记方法,与活动轮廓和参考形状的级别设置功能相关联,用于定义关于欧几里德变换的模型不变的先验知识。在几个模板的情况下,一组完整的不变形状描述符用于根据演化轮廓选择最合适的形状。实验结果表明,所提出的方法将不断变化的曲线朝向刚性变换下可以闭塞和杂乱的目标形状的能力。

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