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Pixel Intensity Clustering Algorithm for Multilevel Image Segmentation

机译:用于多级图像分割的像素强度聚类算法

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Image segmentation is an important problem that has received significant attention in the literature. Over the last few decades, a lot of algorithms were developed to solve image segmentation problem; prominent amongst these are the thresholding algorithms. However, the computational time complexity of thresholding exponentially increases with increasing number of desired thresholds. A wealth of alternative algorithms, notably those based on particle swarm optimization and evolutionary metaheuristics, were proposed to tackle the intrinsic challenges of thresholding. In codicil, clustering based algorithms were developed as multidimensional extensions of thresholding. While these algorithms have demonstrated successful results for fewer thresholds, their computational costs for a large number of thresholds are still a limiting factor. We propose a new clustering algorithm based on linear partitioning of the pixel intensity set and between-cluster variance criterion function for multilevel image segmentation. The results of testing the proposed algorithm on real images from Berkeley Segmentation Dataset and Benchmark show that the algorithm is comparable with state-of-the-art multilevel segmentation algorithms and consistently produces high quality results. The attractive properties of the algorithm are its simplicity, generalization to a large number of clusters, and computational cost effectiveness.
机译:图像分割是一个重要的问题,在文献中受到了极大的关注。在过去的几十年中,开发了许多算法来解决图像分割问题。其中最突出的是阈值算法。但是,阈值的计算时间复杂度随着所需阈值数量的增加而呈指数增加。为了解决阈值的内在挑战,提出了许多替代算法,特别是那些基于粒子群优化和进化元启发式算法的算法。在医学中,基于聚类的算法被开发为阈值的多维扩展。尽管这些算法已经证明了较少阈值的成功结果,但是它们对于大量阈值的计算成本仍然是一个限制因素。我们提出了一种新的基于像素强度集线性划分和聚类间差异标准函数的聚类算法,用于多级图像分割。在Berkeley分割数据集和Benchmark的真实图像上测试该算法的结果表明,该算法与最新的多级分割算法具有可比性,并且始终如一地产生高质量的结果。该算法的吸引人的特性是它的简单性,泛化到大量聚类以及计算成本效益。

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