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Two Bayesian methods for junction classification

机译:两种贝叶斯方法进行结点分类

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We propose two Bayesian methods for junction classification which evolve from the Kona method: a region-based method and an edge-based method. Our region-based method computes a one-dimensional (1-D) profile where wedges are mapped to intervals with homogeneous intensity. These intervals are found through a growing-and-merging algorithm driven by a greedy rule. On the other hand, our edge-based method computes a different profile which maps wedge limits to peaks of contrast, and these peaks are found through thresholding followed by nonmaximum suppression. Experimental results show that both methods are more robust and efficient than the Kona method, and also that the edge-based method outperforms the region-based one.
机译:我们提出了两种从Kona方法演变而来的贝叶斯结点分类方法:基于区域的方法和基于边缘的方法。我们基于区域的方法计算一维(1-D)轮廓,其中楔形被映射到具有均匀强度的间隔。这些间隔是通过由贪婪规则驱动的增长和合并算法找到的。另一方面,我们的基于边缘的方法会计算出一个不同的配置文件,该配置文件将楔形限制映射到对比度的峰值,并且这些峰值是通过阈值化后再进行非最大抑制来找到的。实验结果表明,这两种方法均比Kona方法更健壮和有效,并且基于边缘的方法优于基于区域的方法。

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