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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Geometric active contours without re-initialization for image segmentation
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Geometric active contours without re-initialization for image segmentation

机译:几何活动轮廓,无需重新初始化即可进行图像分割

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摘要

A geometric active contour model without re-initialization that can be used for grey and color image segmentation is presented in this paper. It combines directional information about edge location based on Cumani operator as a part of driving force, with the improved geodesic active contours containing Bays error based statistical region information. Moreover, an extra term that penalizes the deviation of the level set function from a signed distance function is also included in the model, thus the costly re-initialization procedure can be completely eliminated and all these measures are integrated in a unified frame. Experimental results on real grey and color images have shown that our model can precisely extract contours of images and its performance is much better and faster than the geodesic-aided C-V (GACV) model.
机译:本文提出了一种无需重新初始化的可用于灰度和彩色图像分割的几何主动轮廓模型。它结合了基于Cumani算子作为驱动力一部分的有关边缘位置的方向信息,以及包含基于Bays错误的统计区域信息的改进的测地线活动轮廓。此外,该模型还包括一个额外的术语,该术语惩罚了水平集函数与有符号距离函数的偏差,因此可以完全消除代价高昂的重新初始化过程,并将所有这些措施集成在一个统一的框架中。在真实的灰色和彩色图像上的实验结果表明,我们的模型可以精确地提取图像的轮廓,并且其性能比大地测量辅助C-V(GACV)模型快得多。

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