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Graph-Based Joint Clustering of Fixations and Visual Entities

机译:基于图的注视点和视觉实体的联合聚类

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摘要

We present a method that extracts groups of fixations and image regions for the purpose of gaze analysis and image understanding. Since the attentional relationship between visual entities conveys rich information, automatically determining the relationship provides us a semantic representation of images. We show that, by jointly clustering human gaze and visual entities, it is possible to build meaningful and comprehensive metadata that offer an interpretation about how people see images. •To achieve this, we developed a clustering method that uses a joint graph structure between fixation points and over-segmented image regions to ensure a cross-domain smoothness constraint. We show that the proposed clustering method achieves better performance in relating attention to visual entities in comparison with standard clustering techniques.
机译:我们提出了一种方法,用于凝视分析和图像理解的目的,提取注视点和图像区域的组。由于视觉实体之间的注意关系传达了丰富的信息,因此自动确定该关系可以为我们提供图像的语义表示。我们证明,通过将人的视线和视觉实体联合起来,可以构建有意义且全面的元数据,从而提供有关人们如何看待图像的解释。 •为实现此目的,我们开发了一种聚类方法,该方法在注视点和过度分割的图像区域之间使用联合图结构,以确保跨域平滑度约束。我们表明,与标准聚类技术相比,所提出的聚类方法在关注视觉实体方面取得了更好的性能。

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