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Adaptive Pseudo Dilation for Gestalt Edge Grouping and Contour Detection

机译:用于格式塔边缘分组和轮廓检测的自适应伪扩张

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We consider the problem of detecting object contours in natural images. In many cases, local luminance changes turn out to be stronger in textured areas than on object contours. Therefore, local edge features, which only look at a small neighborhood of each pixel, cannot be reliable indicators of the presence of a contour, and some global analysis is needed. We introduce a new morphological operator, called adaptive pseudo-dilation (APD), which uses context dependent structuring elements in order to identify long curvilinear structure in the edge map. We show that grouping edge pixels as the connected components of the output of APD results in a good agreement with the Gestalt law of good continuation. The novelty of this operator is that dilation is limited to the Voronoi cell of each edge pixel. An efficient implementation of APD is presented. The grouping algorithm is then embedded in a multithreshold contour detector. At each threshold level, small groups of edges are removed, and contours are completed by means of a generalized reconstruction from markers. The use of different thresholds makes the algorithm much less sensitive to the values of the input parameters. Both qualitative and quantitative comparison with existing approaches prove the superiority of the proposed contour detector in terms of larger amount of suppressed texture and more effective detection of low-contrast contours.
机译:我们考虑在自然图像中检测物体轮廓的问题。在很多情况下,纹理区域的局部亮度变化比对象轮廓的强度要大。因此,仅关注每个像素的较小邻域的局部边缘特征不能成为轮廓存在的可靠指示,因此需要进行一些全局分析。我们引入了一种新的形态算子,称为自适应伪扩张(APD),该算子使用上下文相关的结构元素来识别边缘图中的长曲线结构。我们显示,将边缘像素分组为APD输出的连接部分,与良好延展性的格式塔定律有很好的一致性。该算子的新颖之处在于,扩张仅限于每个边缘像素的Voronoi单元。提出了APD的有效实现。然后将分组算法嵌入到多阈值轮廓检测器中。在每个阈值级别,将去除少量边缘,并通过对标记的广义重构来完成轮廓。使用不同的阈值会使算法对输入参数的值不那么敏感。与现有方法的定性和定量比较都证明了所提出的轮廓检测器在抑制大量纹理和更有效地检测低对比度轮廓方面的优越性。

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