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Unlevel-Sets: Geometry and Prior-Based Segmentation

机译:Unlevel-Sets:几何和基于先验的细分

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摘要

We present a novel variational approach to top-down image segmentation, which accounts for significant projective transformations between a single prior image and the image to be segmented. The proposed segmentation process is coupled with reliable estimation of the transformation parameters, without using point correspondences. The prior shape is represented by a generalized cone that is based on the contour of the reference object. Its unlevel sections correspond to possible instances of the visible contour under perspective distortion and scaling. We extend the Chan-Vese energy functional by adding a shape term. This term measures the distance between the currently estimated section of the generalized cone and the region bounded by the zero-crossing of the evolving level set function. Promising segmentation results are obtained for images of rotated, translated, corrupted and partly occluded objects. The recovered transformation parameters are compatible with the ground truth.
机译:我们提出了一种新颖的自上而下的图像分割变体方法,该方法考虑了单个先前图像和要分割的图像之间的重大投影变换。所提出的分割过程与对变换参数的可靠估计相结合,而无需使用点对应关系。先验形状由基于参考对象轮廓的广义圆锥表示。它的不平整部分对应于透视变形和缩放下的可见轮廓的可能实例。我们通过添加形状项来扩展Chan-Vese能量函数。该项可测量广义锥当前估计的截面与以演化水平集函数的零交叉为边界的区域之间的距离。对于旋转,平移,损坏和部分遮挡的对象的图像,可以获得有希望的分割结果。恢复的转换参数与地面真实情况兼容。

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