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首页> 外文期刊>Arabian Journal for Science and Engineering >Extended Absolute Fuzzy Connectedness Segmentation AlgorithmrnUtilizing Region and Boundary-Based Information
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Extended Absolute Fuzzy Connectedness Segmentation AlgorithmrnUtilizing Region and Boundary-Based Information

机译:利用区域和边界信息的扩展绝对模糊连通性分割算法

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摘要

Image segmentation is the process of dividing an image into meaningful objects to perform different analysis operations. Fuzzy connectedness (FC)-based segmentation methods usually give robust segmentation results; on the other hand, they suffer from some weaknesses. The generalized or absolute fuzzy connectivity (GFC) segmentation method is the foundation of most FC-based methods. This method has two apparent weaknesses: It combines different objects in the case of their boundaries are blurred, and it can not find the object of interest if the threshold value determined without interactive manner. In this manuscript, we introduce extensions to the GFC algorithm to tackle the mentioned weaknesses. The FC and affinity functions in the extended algorithm utilize region- and boundary-based information to overcome the first weakness. Moreover, this algorithm suggests a near optimal threshold generated automatically to eliminate the need for any interaction. Comparisons has been made to quantitatively evaluate the proposed algorithm over a three sorts of data set of scenes. Measures of relevance have been calculated for two data sets. Results indicate improved segmentation accuracy and also showed that the weaknesses of the traditional GFC algorithms have been eliminated to some extent.
机译:图像分割是将图像划分为有意义的对象以执行不同分析操作的过程。基于模糊连接度(FC)的分割方法通常可提供可靠的分割结果;另一方面,他们遭受一些弱点。广义或绝对模糊连接(GFC)分割方法是大多数基于FC的方法的基础。该方法有两个明显的缺点:在边界模糊的情况下将不同的对象组合在一起,并且如果阈值没有交互方式确定就无法找到感兴趣的对象。在本手稿中,我们介绍了GFC算法的扩展,以解决上述缺陷。扩展算法中的FC和亲和度函数利用基于区域和边界的信息来克服第一个弱点。此外,该算法建议自动生成接近最佳的阈值,以消除任何交互的需要。进行了比较,以在三种场景数据集上定量评估所提出的算法。已经为两个数据集计算了相关性度量。结果表明分割精度有所提高,并且还表明传统GFC算法的弱点已在一定程度上得到了消除。

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