Ouzounis Georgios K, Wilkinson Michael H F
Institute for Mathematics and Computing Science, University of Groningen, 9700 AV Groningen, The Netherlands.
IEEE Trans Pattern Anal Mach Intell. 2007 Jun;29(6):990-1004. doi: 10.1109/TPAMI.2007.1045.
Connected filters are edge-preserving morphological operators, which rely on a notion of connectivity. This is usually the standard 4 and 8-connectivity, which is often too rigid since it cannot model generalized groupings such as object clusters or partitions. In the set-theoretical framework of connectivity, these groupings are modeled by the more general second-generation connectivity. In this paper, we present both an extension of this theory, and provide an efficient algorithm based on the Max-Tree to compute attribute filters based on these connectivities. We first look into the drawbacks of the existing framework that separates clustering and partitioning and is directly dependent on the properties of a preselected operator. We then propose a new type of second-generation connectivity termed mask-based connectivity which eliminates all previous dependencies and extends the ways the image domain can be connected. A previously developed Dual-Input Max-Tree algorithm for area openings is adapted for the wider class of attribute filters on images characterized by second-generation connectivity. CPU-times for the new algorithm are comparable to the original algorithm, typically deviating less than 10 percent either way.
连通滤波器是一种保边形态学算子,它依赖于连通性的概念。这通常是标准的4连通和8连通,然而这种连通性往往过于严格,因为它无法对诸如对象簇或划分等广义分组进行建模。在连通性的集合论框架中,这些分组由更通用的第二代连通性来建模。在本文中,我们不仅对该理论进行了扩展,还基于最大树提供了一种高效算法,用于计算基于这些连通性的属性滤波器。我们首先研究了现有框架的缺点,该框架将聚类和划分分开,并且直接依赖于预选算子的属性。然后,我们提出了一种新型的第二代连通性,称为基于掩码的连通性,它消除了所有先前的依赖性,并扩展了图像域的连通方式。一种先前开发的用于区域开运算的双输入最大树算法被应用于更广泛的以第二代连通性为特征的图像属性滤波器类别。新算法的CPU时间与原始算法相当,通常在任何一种情况下偏差都小于10%。