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Seeded region growing: an extensive and comparative study

机译:播种区域的种植:广泛而可比较的研究

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摘要

Seeded region growing (SRG) algorithm is very attractive for semantic image segmentation by involving high-level knowledge of image components in the seed selection procedure. However, the SRG algorithm also suffers from the problems of pixel sorting orders for labeling and automatic seed selection. An obvious way to improve the SRG algorithm is to provide more effective pixel labeling technique and automate the process of seed selection. To provide such a framework, we design an automatic SRG algorithm, along with a boundary-oriented parallel pixel labeling technique and an automatic seed selection method. Moreover, a seed tracking algorithm is proposed for automatic moving object extraction. The region seeds, which are located inside the temporal change mask, are selected for generating the regions of moving objects. Experimental evaluation shows good performances of our technique on a relatively large variety of images without the need of adjusting parameters.
机译:种子区域生长(SRG)算法通过在种子选择过程中涉及图像成分的高级知识,对于语义图像分割非常有吸引力。然而,SRG算法还遭受用于标记和自动种子选择的像素排序顺序的问题。改进SRG算法的一个明显方法是提供更有效的像素标记技术,并使种子选择过程自动化。为了提供这样的框架,我们设计了一种自动SRG算法,以及面向边界的并行像素标记技术和自动种子选择方法。此外,提出了一种用于自动运动目标提取的种子跟踪算法。选择位于时间变化掩模内的区域种子以生成运动对象的区域。实验评估表明,在无需调整参数的情况下,我们的技术在各种图像上均具有良好的性能。

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