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INTELLIGENT UNDERSTANDING OF USER INTERACTION IN IMAGE SEGMENTATION

机译:图像分割中用户交互的智能理解

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摘要

We have developed interactive tools for graph-based segmentation of natural images, in which the user guides object delineation by drawing strokes (markers) inside and outside the object. A suitable arc-weight estimation is paramount to minimize user time and maximize segmentation accuracy in these tools. However, it depends on discriminative image properties for object and background. These properties can be obtained from some marker pixels, but their identification is a hard problem during delineation. Careless arc-weight re-estimation reduces user control and drops performance, while interactive arc-weight estimation in a step before interactive object extraction is the best option so far, albeit it is not intuitive for nonexpert users. We present an effective solution using the unified framework of the image foresting transform (IFT) with three operators: clustering for interpreting user interaction and determining when and where arc weights need to be re-estimated; fuzzy classification for arc-weight estimation; and marker competition based on optimum connectivity for object extraction. For validation, we compared the proposed approach with another interactive IFT-based method, which computes arc weights before extraction. Evaluation involved multiple users (experts and nonexperts), a dataset with several natural images, and measurements to quantify accuracy, precision, efficiency (user time and computation time), and user control, being some of them novel measurements, proposed in this work.
机译:我们已经开发了用于基于图的自然图像分割的交互式工具,其中用户可以通过在对象内部和外部绘制笔划(标记)来引导对象描绘。在这些工具中,适当的弧重估计非常重要,它可以最大程度地减少用户时间并最大程度地提高细分精度。但是,它取决于对象和背景的区分图像属性。这些属性可以从某些标记像素中获得,但是在描绘过程中很难识别它们。粗心的弧度权重估计会降低用户控制能力并降低性能,而到目前为止,交互式对象提取之前的一个步骤中的交互式弧度权重估计是迄今为止最好的选择,尽管对于非专业用户而言这并不直观。我们提供了一种有效的解决方案,它使用具有三个运算符的图像森林变换(IFT)的统一框架:聚类,用于解释用户交互并确定何时和何处需要重新估计弧权重;弧重估计的模糊分类;基于最佳连通性进行对象提取的标记竞争。为了进行验证,我们将提出的方法与另一种基于IFT的交互式方法进行了比较,该方法在提取之前计算电弧权重。评估涉及多个用户(专家和非专家),具有多个自然图像的数据集,以及用于量化准确性,精度,效率(用户时间和计算时间)和用户控制的度量,这些是本文中提出的新颖度量。

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