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PRINCIPAL GEODESIC ANALYSIS BOUNDARY DELINEATION WITH SUPERPIXEL-BASED CONSTRAINTS

机译:基于超像素约束的主测地分析边界定界

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摘要

In this paper an algorithm for accurate delineation of object boundaries is proposed. The method employs a superpixel algorithm to obtain an oversegmentation of the input image, used as a constraint in the task. A shape model is built by applying Principal Geodesic Analysis on angular representation of automatically placed uniformly distant landmark points. The shape model is used to detect the boundaries of an object on a given image by iterative elongation of a partial boundary along borders of superpixels. Contrary to many state-of-the-art methods, the proposed approach does not need an initial boundary. The algorithm was tested on two natural and two synthetic sets of images. Mean Dice coefficients between 0.91 and 0.97 were obtained. In almost all cases the object was found. In areas of relatively high gradient magnitude the borders are delineated very accurately, though further research is needed to improve the accuracy in areas of low gradient magnitude and automatically select the parameters of the proposed error function.
机译:本文提出了一种精确描绘物体边界的算法。该方法采用超像素算法来获得输入图像的超分割,该超分割被用作任务中的约束。通过将主测地线分析应用于自动放置的均匀距离地标点的角度表示,可以构建形状模型。形状模型用于通过沿超像素边界迭代拉伸部分边界来检测给定图像上对象的边界。与许多最新方法相反,所提出的方法不需要初始边界。在两个自然和两个合成图像集上测试了该算法。获得的平均骰子系数在0.91和0.97之间。几乎在所有情况下都找到了对象。在梯度幅度相对较高的区域中,边界的描绘非常准确,尽管需要进一步研究以提高梯度幅度较低的区域中的精度并自动选择建议的误差函数的参数。

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