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Beyond active noun tagging: Modeling contextual interactions for multi-class active learning

机译:超越主动名词标记:为多类别主动学习建模上下文交互

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We present an active learning framework to simultaneously learn appearance and contextual models for scene understanding tasks (multi-class classification). Existing multi-class active learning approaches have focused on utilizing classification uncertainty of regions to select the most ambiguous region for labeling. These approaches, however, ignore the contextual interactions between different regions of the image and the fact that knowing the label for one region provides information about the labels of other regions. For example, the knowledge of a region being sea is informative about regions satisfying the “on” relationship with respect to it, since they are highly likely to be boats. We explicitly model the contextual interactions between regions and select the question which leads to the maximum reduction in the combined entropy of all the regions in the image (image entropy). We also introduce a new methodology of posing labeling questions, mimicking the way humans actively learn about their environment. In these questions, we utilize the regions linked to a concept with high confidence as anchors, to pose questions about the uncertain regions. For example, if we can recognize water in an image then we can use the region associated with water as an anchor to pose questions such as “what is above water?”. Our active learning framework also introduces questions which help in actively learning contextual concepts. For example, our approach asks the annotator: “What is the relationship between boat and water?” and utilizes the answer to reduce the image entropies throughout the training dataset and obtain more relevant training examples for appearance models.
机译:我们提供了一个主动学习框架,同时学习场景理解任务(多级分类)的外观和上下文模型。现有的多级主动学习方法专注于利用区域的分类不确定性来选择用于标记的最模糊的区域。然而,这些方法忽略了图像的不同区域之间的上下文相互作用以及了解一个区域的标签的事实提供了关于其他区域标签的信息。例如,海上区域的知识是关于满足与它的关系的区域的信息,因为它们很可能是船只。我们明确地模拟了区域之间的上下文交互,并选择了导致图像中所有区域的组合熵的最大值的问题(图像熵)。我们还介绍了一种新的构成标签问题的方法,模仿人类积极了解他们的环境。在这些问题中,我们利用与锚定的概念相关的地区作为锚点,对不确定的地区提出问题。例如,如果我们可以在图像中识别水,那么我们可以使用与水相关联的区域作为锚,以造成诸如“在水之外的东西?”之类的问题。我们的积极学习框架还介绍了积极学习上下围概念的问题。例如,我们的方法询问了注释者:“船和水之间的关系是什么?”并利用答案在整个训练数据集中减少图像熵,并获得更相关的外观模型的培训示例。

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