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Scene segmentation by spike synchronization in reciprocally connected visual areas. I. Local effects of cortical feedback

机译:在相互连接的可视区域中通过尖峰同步进行场景分割。一,皮质反馈的局部影响

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To investigate scene segmentation in the visual system we present a model of two reciprocally connected visual areas using spiking neurons. Area P corresponds to the orientation-selective subsystem of the primary visual cortex, while the central visual area C is modeled as associative memory representing stimulus objects according to Hebbian learning. Without feedback from area C, a single stimulus results in relatively slow and irregular activity, synchronized only for neighboring patches (slow state), while in the complete model activity is faster with an enlarged synchronization range (fast state). When presenting a superposition of several stimulus objects, scene segmentation happens on a time scale of hundreds of milliseconds by alternating epochs of the slow and last states, where neurons representing the same object are simultaneously in the fast state. Correlation analysis reveals synchronization on different time scales as found in experiments (designated as tower, castle, and hill peaks). On the fast time scale (tower peaks, gamma frequency range), recordings from two sites coding either different or the same object lead to correlograms that are either flat or exhibit oscillatory modulations with a central peak. This is in agreement with experimental findings, whereas standard phase-coding models would predict shifted peaks in the case of different objects. [References: 57]
机译:为了研究视觉系统中的场景分割,我们提出了使用尖峰神经元的两个相互连接的视觉区域的模型。区域P对应于主要视觉皮层的方向选择子系统,而中央视觉区域C根据Hebbian学习被建模为代表刺激对象的联想记忆。如果没有来自区域C的反馈,则单个刺激会导致相对缓慢和不规则的活动,仅针对相邻面片进行同步(慢状态),而在完整模型中,活动会随着同步范围的扩大而变快(快速状态)。当呈现多个刺激对象的叠加时,场景的分割发生在数百毫秒的时间尺度上,这是通过交替显示慢速状态和最后状态的时期来实现的,其中代表同一对象的神经元同时处于快速状态。相关性分析揭示了实验中发现的不同时间尺度上的同步(称为塔峰,城堡峰和山峰)。在快速时间尺度上(塔峰,伽马频率范围),来自编码不同或相同物体的两个位置的记录会导致相关图平坦或具有中心峰值的振荡调制。这与实验结果相符,而标准相位编码模型将在不同对象的情况下预测移动峰。 [参考:57]

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