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Looking Into Saliency Model via Space-Time Visualization

机译:通过时空可视化研究显着性模型

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摘要

We introduce a visual analytics method to analyze eye-tracking data and saliency models for dynamic stimuli, such as video or animated graphics. The focus lies on the analysis of the different performance of saliency models in contrast to human observers to identify trends in the general viewing behavior, including time sequences of attentional synchrony and objects with a strong attentional focus. By using a space-time cube visualization in combination with clustering, the dynamic stimuli and associated eye gazes as well as the attention maps from saliency models can be analyzed in a static three-dimensional representation. We propose algorithms to keep the appearance of the computer's attention data in line with the human's eye-tracking data. The analytical process is supported by multiple coordinated views that allow the user to focus on different aspects of spatial and temporal information in eye gaze data and saliency map. By comparing attention data from both human and computer incorporated with the spatiotemporal characteristics, we are able to find the different patterns within human and computer algorithms. We list our key findings to help developing better saliency detection algorithms.
机译:我们引入了一种视觉分析方法来分析眼动数据和显着性模型以进行动态刺激,例如视频或动画图形。与人类观察者相比,重点在于对显着性模型的不同性能进行分析,以识别一般观看行为的趋势,包括注意同步的时间序列和具有高度关注焦点的对象。通过结合使用时空立方体可视化和聚类,可以在静态的三维表示中分析动态刺激和相关的视线以及显着性模型的注意图。我们提出了算法,以使计算机的注意力数据的外观与人眼跟踪数据保持一致。多个协调视图支持该分析过程,这些视图使用户可以将精力集中在视线数据和显着性图的空间和时间信息的不同方面。通过比较来自人类和计算机的注意力数据以及时空特征,我们能够在人类和计算机算法中找到不同的模式。我们列出了我们的主要发现,以帮助开发更好的显着性检测算法。

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