基于简单线性迭代聚类的超像素分割改进算法

R. Al-azawi, Q. Al-Jubouri, Y. A. Mohammed
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引用次数: 2

摘要

图像分割过程是大多数计算机视觉系统的主要阶段。本文提出了一种基于简单线性迭代聚类(SLIC)的改进算法,以减少阈值估计使用的种子数量和图像分割的整个执行时间。这是通过对位置、种子数量以及种子点的其他参数使用分裂和合并阶段来实现的。得到的结果表明,可以使用多种阈值水平,而不是单一的阈值水平,这是由于估计复杂性而带来的挑战。阈值水平估计的独立性可以显著提高整个图像分割过程的性能。
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Enhanced Algorithm of Superpixel Segmentation Using Simple Linear Iterative Clustering
Image segmentation process represents the main stage for most computer vision systems. This paper presents an improved algorithm based on simple linear iterative clustering (SLIC) to reduce the number of used seeds for threshold estimation as well as the entire execution time of image segmentation. These is achieved by using split and merge stages for the location, number of seeds as well as other parameters of the seed points. The obtained results showed the possibility of using various threshold levels instead of a single one which represented a challenge due to the estimation complexity. The independent of the threshold-level estimation can contribute significantly in improving performance of the overall image segmentation process.)
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