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首页> 外文期刊>IEICE transactions on information and systems >Top-Down Visual Attention Estimation Using Spatially Localized Activation Based on Linear Separability of Visual Features
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Top-Down Visual Attention Estimation Using Spatially Localized Activation Based on Linear Separability of Visual Features

机译:基于视觉特征线性可分性的空间局部激活自上而下的视觉注意估计

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摘要

Intelligent information systems captivate people's attention. Examples of such systems include driving support vehicles capable of sensing driver state and communication robots capable of interacting with humans. Modeling how people search visual information is indispensable for designing these kinds of systems. In this paper, we focus on human visual attention, which is closely related to visual search behavior. We propose a computational model to estimate human visual attention while carrying out a visual target search task. Existing models estimate visual attention using the ratio between a representative value of visual feature of a target stimulus and that of distractors or background. The models, however, can not often achieve a better performance for difficult search tasks that require a sequentially spotlighting process. For such tasks, the linear separability effect of a visual feature distribution should be considered. Hence, we introduce this effect to spatially localized activation. Concretely, our top-down model estimates target-specific visual attention using Fisher's variance ratio between a visual feature distribution of a local region in the field of view and that of a target stimulus. We confirm the effectiveness of our computational model through a visual search experiment.
机译:智能信息系统吸引了人们的注意力。这样的系统的示例包括能够感知驾驶员状态的驾驶辅助车辆和能够与人互动的通信机器人。设计人们如何搜索视觉信息的模型对于设计这类系统是必不可少的。在本文中,我们关注与视觉搜索行为密切相关的人类视觉注意力。我们提出了一种计算模型来估计人类的视觉注意力,同时执行视觉目标搜索任务。现有模型使用目标刺激的视觉特征的代表值与干扰物或背景的视觉特征的代表值之间的比率来估计视觉注意力。但是,对于需要顺序聚焦的困难搜索任务,这些模型通常无法获得更好的性能。对于此类任务,应考虑视觉特征分布的线性可分性效应。因此,我们将此效应引入空间局部激活。具体而言,我们的自上而下模型使用视场中局部区域的视觉特征分布与目标刺激的视觉特征分布之间的费舍尔方差比来估算特定于目标的视觉注意力。我们通过视觉搜索实验确认了我们的计算模型的有效性。

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