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A Hierarchical Task Assignment for Manual Image Labeling

机译:手动图像标记的分层任务分配

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Manual image labeling (selecting an appropriate “category” for an image) is very tedious and time consuming especially when selecting labels from a large number of categories. In this study, we propose a hierarchical assignment of labeling tasks where the labelers recursively classify images in a category group into sub category groups, working on a single level at a time. This significantly makes each labeler’s task easier, reducing the number of choices from 1,000 to 27 on average. In the user study, we compared our hierarchical assignment to a normal (non-hierarchical) assignment for a labeling task. The results show that the hierarchical assignment requires less total time to complete the labeling task. In addition, the learning effect in the labeling process is more profound in the hierarchical assignment.
机译:手动图像标记(为图像选择适当的“类别”)非常繁琐且耗时,特别是在从大量类别中选择标签时。在本研究中,我们提出了标签任务的分级分配,其中贴标器递归地将类别组中的图像分类为子类别组,一次在单个级别上工作。这显着使每个贴标程序的任务更容易,平均减少1,000到27的选择数量。在用户学习中,我们将分层分配与标签任务的正常(非分层)分配进行了比较。结果表明,分层分配需要较少的总时间来完成标签任务。此外,标签过程中的学习效果在分层分配中更深入。

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