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Neuromorphic VLSI models of selective attention: from single chip vision sensors to multi-chip systems

机译:选择性关注的神经形态VLSI模型:从单芯片视觉传感器到多芯片系统

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摘要

Biological organisms perform complex selective attention operations continuously and effortlessly. These operations allow them to quickly determine the motor actions to take in response to combinations of external stimuli and internal states, and to pay attention to subsets of sensory inputs suppressing non salient ones. Selective attention strategies are extremely effective in both natural and artificial systems which have to cope with large amounts of input data and have limited computational resources. One of the main computational primitives used to perform these selection operations is the Winner-Take-All (WTA) network. These types of networks are formed by arrays of coupled computational nodes that selectively amplify the strongest input signals, and suppress the weaker ones. Neuromorphic circuits are an optimal medium for constructing WTA networks and for implementing efficient hardware models of selective attention systems. In this paper we present an overview of selective attention systems based on neuromorphic WTA circuits ranging from single-chip vision sensors for selecting and tracking the position of salient features, to multi-chip systems implement saliency-map based models of selective attention.
机译:生物有机体可以毫不费力地连续执行复杂的选择性注意操作。这些操作使他们能够快速确定响应外部刺激和内部状态的组合而采取的运动,并注意抑制非显着性输入的感觉输入。选择性注意策略在必须应对大量输入数据且计算资源有限的自然系统和人工系统中都非常有效。用于执行这些选择操作的主要计算原语之一是Winner-Take-All(WTA)网络。这些类型的网络由耦合的计算节点的阵列形成,这些节点选择性地放大最强的输入信号并抑制较弱的输入信号。神经形态电路是构建WTA网络和实现选择性注意系统的有效硬件模型的理想介质。在本文中,我们介绍了基于神经形态WTA电路的选择性注意系统的概述,范围从用于选择和跟踪显着特征位置的单片视觉传感器到实现基于显着性图的选择性注意模型的多芯片系统。

著录项

  • 作者

    Indiveri, G;

  • 作者单位
  • 年度 2008
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
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