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A Bayesian generative model for learning semantic hierarchies

机译:用于语义层次学习的贝叶斯生成模型

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摘要

Building fine-grained visual recognition systems that are capable of recognizing tens of thousands of categories, has received much attention in recent years. The well known semantic hierarchical structure of categories and concepts, has been shown to provide a key prior which allows for optimal predictions. The hierarchical organization of various domains and concepts has been subject to extensive research, and led to the development of the WordNet domains hierarchy (Fellbaum, ), which was also used to organize the images in the ImageNet (Deng et al., ) dataset, in which the category count approaches the human capacity. Still, for the human visual system, the form of the hierarchy must be discovered with minimal use of supervision or innate knowledge. In this work, we propose a new Bayesian generative model for learning such domain hierarchies, based on semantic input. Our model is motivated by the super-subordinate organization of domain labels and concepts that characterizes WordNet, and accounts for several important challenges: maintaining context information when progressing deeper into the hierarchy, learning a coherent semantic concept for each node, and modeling uncertainty in the perception process.
机译:近年来,建立能够识别成千上万个类别的细粒度视觉识别系统备受关注。已经显示了类别和概念的众所周知的语义层次结构,以提供允许进行最佳预测的关键先验。各个领域和概念的层次结构已受到广泛研究,并导致了WordNet域层次结构(Fellbaum,)的发展,该层次结构还用于组织ImageNet(Deng等,)数据集中的图像,其中类别计数接近人员能力。尽管如此,对于人类视觉系统而言,必须以最少的监督或先天知识发现层次结构的形式。在这项工作中,我们提出了一个新的贝叶斯生成模型,用于基于语义输入来学习此类域层次结构。我们的模型是由表征WordNet的域标签和概念的超下级组织推动的,并解决了几个重要的挑战:在深入层次结构时维护上下文信息,为每个节点学习一致的语义概念以及对模型中的不确定性进行建模知觉过程。

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