Extensive research has been conducted in an effort to evaluate methods and techniques for imagesegmentation. However, while most literature has focused on evaluating automatic and semi-automatic algorithms, works eva...
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ISBN:
(纸本)9781467394611
Extensive research has been conducted in an effort to evaluate methods and techniques for imagesegmentation. However, while most literature has focused on evaluating automatic and semi-automatic algorithms, works evaluating interactivesegmentationalgorithms are less numerous. Note that interactivesegmentation 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-basedinteractivesegmentationalgorithms. We first compare popular metrics that are employed in image-segmentation evaluations in order to define which one reflects most accurately the performance of segmentationalgorithms. 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 interactivesegmentationalgorithms. 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.
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