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Recurrent Network Dynamics; a Link between Form and Motion

机译:循环网络动态;形式与运动之间的联系

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摘要

To discriminate visual features such as corners and contours, the brain must be sensitive to spatial correlations between multiple points in an image. Consistent with this, macaque V2 neurons respond selectively to patterns with well-defined multipoint correlations. Here, we show that a standard feedforward model (a cascade of linear–non-linear filters) does not capture this multipoint selectivity. As an alternative, we developed an artificial neural network model with two hierarchical stages of processing and locally recurrent connectivity. This model faithfully reproduced neurons’ selectivity for multipoint correlations. By probing the model, we gained novel insights into early form processing. First, the diverse selectivity for multipoint correlations and complex response dynamics of the hidden units in the model were surprisingly similar to those observed in V1 and V2. This suggests that both transient and sustained response dynamics may be a vital part of form computations. Second, the model self-organized units with speed and direction selectivity that was correlated with selectivity for multipoint correlations. In other words, the model units that detected multipoint spatial correlations also detected space-time correlations. This leads to the novel hypothesis that higher-order spatial correlations could be computed by the rapid, sequential assessment and comparison of multiple low-order correlations within the receptive field. This computation links spatial and temporal processing and leads to the testable prediction that the analysis of complex form and motion are closely intertwined in early visual cortex.
机译:要区分诸如拐角和轮廓之类的视觉特征,大脑必须对图像中多个点之间的空间相关性敏感。与此相一致,猕猴V2神经元选择性地响应具有明确定义的多点关联的模式。在这里,我们表明标准的前馈模型(线性-非线性滤波器的级联)不能捕获这种多点选择性。作为替代方案,我们开发了一个人工神经网络模型,该模型具有两个层次的处理阶段和本地循环连接性。该模型忠实地再现了神经元对多点关联的选择性。通过探究模型,我们获得了对早期表格处理的新颖见解。首先,模型中隐藏单元的多点关联的多种选择性和复杂的响应动力学令人惊讶地类似于在V1和V2中观察到的那些。这表明瞬态和持续响应动力学都可能是表单计算的重要组成部分。第二,模型自组织单元的速度和方向选择性与多点关联的选择性相关。换句话说,检测到多点空间相关性的模型单元也检测到时空相关性。这导致了新的假设,即可以通过快速,顺序的评估和接受区域内多个低阶相关性的比较来计算高阶空间相关性。这种计算将空间和时间处理联系起来,并得出可检验的预测,即早期视觉皮层中复杂形式和运动的分析紧密地交织在一起。

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