首页> 外文会议>International Workshop on Robot Vision RobVis 2001, Feb 16-18, 2001, Auckland, New Zealand >Hypothetically Modeled Perceptual Sensory Modality of Human Visual Selective Attention Scheme by PFC-Based Network
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Hypothetically Modeled Perceptual Sensory Modality of Human Visual Selective Attention Scheme by PFC-Based Network

机译:基于PFC的网络的人类视觉选择性注意方案的假想知觉感知模态

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The Selective Attention Scheme has attracted renowned interest in the field of sensorimotor control and visual recognition problems. Especially, selective attention is crucial in terms of saving computational cost for constructing a sensorimotor control system, as the amount of sensory inputs over the system far exceeds its information processing capacity. In fact, selective attention plays an integral role in sensory information processing, enhancing neuronal responses to important or task-relevant stimuli at the expense of the neuronal responses to irrelevant stimuli. To compute human selective attention scheme, we assume that each attention modeled as a probabilistic class must correctly be learned to yield the relationship with different sensory inputs by learning schemes in the first place (sensory modality). Afterwards, their learned probabilistic attention classes can straightforwardly be used for the control property of selecting attention (shifting attention). In this paper, the soundness of proposed human selective attention scheme has been shown in particular with perceptual sensory modality. The scheme is actually realized by a neural network, namely PFC-based network.
机译:选择性注意方案在感觉运动控制和视觉识别问题领域引起了广泛的关注。尤其是,选择性注意对于节省构造传感器运动控制系统的计算成本而言至关重要,因为整个系统的感觉输入量远远超过了其信息处理能力。实际上,选择性注意在感觉信息处理中起着不可或缺的作用,从而以对无关刺激的神经元响应为代价,增强了对重要或任务相关刺激的神经元响应。为了计算人类选择性注意方案,我们假设必须首先通过学习方案(感觉模态)正确学习建模为概率类的每个注意,以产生与不同感觉输入的关系。之后,他们学习到的概率注意力类别可以直接用于选择注意力(转移注意力)的控制属性。在本文中,已提出的人类选择性注意方案的正确性已特别在知觉感官方式上得到了证明。该方案实际上是通过神经网络,即基于PFC的网络来实现的。

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