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An Attentional System Combining Top-Down and Bottom-Up Influences

机译:一种结合自上而下和自下而上影响的注意力系统

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Attention plays an important role in human processing of sensory information as a mean of focusing resources toward the most important inputs at the moment. It has in particular been shown to be a key component of vision. In vision it has been argued that the attentional processes are crucial for dealing with the complexity of real world scenes. The problem has often been posed in terms of visual search tasks. It has been shown that both the use of prior task and context information - top-down influences - and favoring information that stands out clearly in the visual field - bottom-up influences - can make such search more efficient. In a generic scene analysis situation one presumably has a combination of these influences and a computational model for visual attention should therefore contain a mechanism for their integration. Such models are abundant for human vision, but relatively few attempts have been made to define any that apply to computer vision. In this article we describe a model that performs such a combination in a principled way. The system learns an optimal representation of the influences of task and context and thereby constructs a biased saliency map representing the top-down information. This map is combined with bottom-up saliency maps in a process evolving over time as a function over the input. The system is applied to search tasks in single images as well as in real scenes, in the latter case using an active vision system capable of shifting its gaze. The proposed model is shown to have desired qualities and to go beyond earlier proposed systems.
机译:注意在人力处理感官信息中发挥重要作用,作为将资源聚焦到目前最重要的投入的平均值。特别是已被证明是视觉的关键组成部分。在愿景中,有人认为注意力过程对于处理现实世界场景的复杂性至关重要。问题通常在视觉搜索任务方面提出。已经表明,使用先前的任务和上下文信息 - 自上而下的影响 - 并有利于在视野中清楚地脱颖而出的信息 - 自下而上的影响 - 可以更高效地进行此类搜索。在通用场景分析情况下,一个可能具有这些影响的组合,并且视觉注意的计算模型应该包含它们集成的机制。这种模型对于人类的愿景很丰富,但已经采取了相对较少的尝试来定义适用于计算机视觉的任何东西。在本文中,我们描述了一种以原则方式执行这种组合的模型。该系统学习任务和上下文影响的最佳表示,从而构造表示自上而下信息的偏置显着图。该映射与随时间随时间发展的过程中的自下而上的显着图组合在一起。系统应用于在后一种情况下搜索单个图像中的任务,在后一种情况下,使用能够移位其凝视的活动视觉系统。所提出的模型被证明具有所需的品质并超越早期的提出系统。

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