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Hybrid image segmentation using watersheds and fast region merging

机译:使用分水岭和快速区域合并的混合图像分割

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A hybrid multidimensional image segmentation algorithm is proposed, which combines edge and region-based techniques through the morphological algorithm of watersheds. An edge-preserving statistical noise reduction approach is used as a preprocessing stage in order to compute an accurate estimate of the image gradient. Then, an initial partitioning of the image into primitive regions is produced by applying the watershed transform on the image gradient magnitude. This initial segmentation is the input to a computationally efficient hierarchical (bottom-up) region merging process that produces the final segmentation. The latter process uses the region adjacency graph (RAG) representation of the image regions. At each step, the most similar pair of regions is determined (minimum cost RAG edge), the regions are merged and the RAG is updated. Traditionally, the above is implemented by storing all RAG edges in a priority queue. We propose a significantly faster algorithm, which additionally maintains the so-called nearest neighbor graph, due to which the priority queue size and processing time are drastically reduced. The final segmentation provides, due to the RAG, one-pixel wide, closed, and accurately localized contours/surfaces. Experimental results obtained with two-dimensional/three-dimensional (2-D/3-D) magnetic resonance images are presented.
机译:提出了一种混合的多维图像分割算法,通过分水岭的形态学算法将基于边缘和区域的技术相结合。保留边缘的统计降噪方法被用作预处理阶段,以便计算图像梯度的准确估计值。然后,通过对图像梯度幅值应用分水岭变换,将图像初步划分为原始区域。该初始分段是产生最终分段的计算有效分层(自下而上)区域合并过程的输入。后面的过程使用图像区域的区域邻接图(RAG)表示。在每个步骤中,确定最相似的区域对(最低成本RAG边缘),合并区域并更新RAG。传统上,以上是通过将所有RAG边缘存储在优先级队列中来实现的。我们提出了一种速度显着更快的算法,该算法还维护了所谓的最近邻居图,从而大大减少了优先级队列的大小和处理时间。由于使用了RAG,最终的分割提供了一个像素宽,封闭且精确定位的轮廓/表面。提出了利用二维/三维(2-D / 3-D)磁共振图像获得的实验结果。

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