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Automatic detection of regions of interest in complex video sequences

机译:自动检测复杂视频序列的感兴趣区域

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Studies of visual attention and eye movements have shown that people generally attend to only a few areas in typical scenes. These areas are commonly referred to as regions of interest (ROIs). When scenes are viewed with the same context and motivation, these ROIs are often highly correlated amongst different people, motivating the development of computational models of visual attention. This paper describes a novel model of visual attention designed to provide an accurate and robust prediction of a viewer's locus of attention across a wide range of typical video content. The model has been calibrated and verified using data gathered in an experiment in which the eye movements of 24 viewers were recorded while viewing material form a large database of still and video scenes. Certain characteristics of the scene content, such as moving objects, people, foreground and centrally-located objects, were found to exert a strong influence on viewers' attention. The results of comparing model predictions to experimental data demonstrate a strong correlation between the predicted ROIs and viewers' fixations.
机译:视觉关注和眼部运动的研究表明,人们通常只参加典型场景中的几个区域。这些领域通常被称为兴趣区域(ROI)。当使用相同的上下文和动机观看场景时,这些ROI通常在不同的人群之间具有高度相关,激励视觉关注的计算模型的发展。本文介绍了一种新颖的视觉关注模型,旨在提供对广泛典型视频内容的广泛关注的准确和鲁棒预测。使用在实验中收集的数据校准并验证了模型,其中记录了24个观看者的眼睛运动,同时观看材料形成大型仍然和视频场景。发现场景内容的某些特征,例如移动物体,人,前景和位于中心的物体,对观众的注意力产生了强烈影响。将模型预测与实验数据进行比较的结果表明了预测的ROI和观众的固定之间的强烈相关性。

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