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Neural dynamics at successive stages of the ventral visual stream are consistent with hierarchical error signals

机译:腹侧视觉流连续阶段的神经动力学与分层误差信号一致

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Ventral visual stream neural responses are dynamic, even for static image presentations. However, dynamical neural models of visual cortex are lacking as most progress has been made modeling static, time-averaged responses. Here, we studied population neural dynamics during face detection across three cortical processing stages. Remarkably,~30 milliseconds after the initially evoked response, we found that neurons in intermediate level areas decreased their responses to typical configurations of their preferred face parts relative to their response for atypical configurations even while neurons in higher areas achieved and maintained a preference for typical configurations. These hierarchical neural dynamics were inconsistent with standard feedforward circuits. Rather, recurrent models computing prediction errors between stages captured the observed temporal signatures. This model of neural dynamics, which simply augments the standard feedforward model of online vision, suggests that neural responses to static images may encode top-down prediction errors in addition to bottom-up feature estimates.
机译:腹侧视觉流神经反应是动态的,即使对于静态图像演示也是如此。但是,缺乏可视皮层的动态神经模型,因为在建模静态,平均时间响应方面取得了很大进展。在这里,我们研究了在三个皮质处理阶段的面部检测过程中的种群神经动力学。值得注意的是,在最初引起反应后约30毫秒,我们发现中级区域的神经元相对于其对非典型配置的响应,降低了其对优选面部部分典型配置的响应,即使较高区域的神经元实现并保持了对典型配置的偏好配置。这些分层的神经动力学与标准前馈电路不一致。而是,计算阶段之间的预测误差的递归模型捕获了观察到的时间特征。这种神经动力学模型可以简单地扩充标准的在线视觉前馈模型,表明对静态图像的神经响应除了自下而上的特征估计外,还可以编码自上而下的预测误差。

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