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Supervised evaluation of seed-based interactive image segmentation algorithms

机译:基于种子的交互式图像分割算法的监督评估

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Extensive research has been conducted in an effort to evaluate methods and techniques for image segmentation. However, while most literature has focused on evaluating automatic and semi-automatic algorithms, works evaluating interactive segmentation algorithms are less numerous. Note that interactive segmentation can improve results by adding prior knowledge from users into the process. Although this user guidance improves segmentation results, it also makes difficult to conduct objective evaluations. For this reason, some works only present non-canonical evaluations. In this paper, we present an objective and empirical evaluation of seed-based interactive segmentation algorithms. We first compare popular metrics that are employed in image-segmentation evaluations in order to define which one reflects most accurately the performance of segmentation algorithms. Then, in the aim of presenting reproducible results, we introduce a novel seed-based user input dataset that extends the well-known GrabCut dataset. In addition, we evaluate and contrast four state-of-the-art interactive segmentation algorithms. The analysis of the results demonstrates that Jaccard coefficient and Precision-Recall curves provide a good insight into the performance of the evaluated algorithms. Finally, the GrabCut algorithm presents the most robust and useful segmentation among all the evaluated algorithms.
机译:已经进行了广泛的研究,以评估图像分割的方法和技术。但是,虽然大多数文献都集中在评估自动和半自动算法,但是评估交互式分段算法的作品较少。请注意,交互式分段可以通过将用户从用户添加到过程中的先验知识来提高结果。虽然这一用户指导提高了分割结果,但它也很难进行客观评估。因此,有些作品只出现非规范评估。在本文中,我们提出了一种基于种子的交互式分割算法的目标和实证评价。我们首先比较在图像分割评估中使用的流行度量,以便定义哪一个最准确地反映分割算法的性能。然后,为了呈现可重复的结果,我们介绍了扩展了众所周知的Grabcut数据集的新型基于种子的用户输入数据集。此外,我们评估并对比四个最先进的交互式分段算法。结果分析表明Jaccard系数和精密召回曲线对评估算法的性能提供了良好的洞察。最后,GrabCut算法在所有评估算法之间呈现最强大和有用的分割。

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