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Motion detection based on recurrent network dynamics

机译:基于递归网络动力学的运动检测

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摘要

The detection of visual motion requires temporal delays to compare current with earlier visual input. Models of motion detection assume that these delays reside in separate classes of slow and fast thalamic cells, or slow and fast synaptic transmission. We used a data-driven modeling approach to generate a model that instead uses recurrent network dynamics with a single, fixed temporal integration window to implement the velocity computation. This model successfully reproduced the temporal response dynamics of a population of motion sensitive neurons in macaque middle temporal area (MT) and its constituent parts matched many of the properties found in the motion processing pathway (e.g., Gabor-like receptive fields (RFs), simple and complex cells, spatially asymmetric excitation and inhibition). Reverse correlation analysis revealed that a simplified network based on first and second order space-time correlations of the recurrent model behaved much like a feedforward motion energy (ME) model. The feedforward model, however, failed to capture the full speed tuning and direction selectivity properties based on higher than second order space-time correlations typically found in MT. These findings support the idea that recurrent network connectivity can create temporal delays to compute velocity. Moreover, the model explains why the motion detection system often behaves like a feedforward ME network, even though the anatomical evidence strongly suggests that this network should be dominated by recurrent feedback.
机译:视觉运动的检测需要时间延迟以将电流与早期视觉输入进行比较。运动检测模型假定这些延迟位于缓慢和快速丘脑细胞或缓慢和快速突触传递的不同类别中。我们使用了数据驱动的建模方法来生成模型,该模型使用循环网络动力学和单个固定的时间积分窗口来实现速度计算。此模型成功地复制了猕猴中颞叶区域(MT)的一系列运动敏感神经元的时间响应动力学,其组成部分与运动处理路径中发现的许多属性(例如Gabor样感受野(RF),简单和复杂的细胞,空间上不对称的激发和抑制)。反向相关分析表明,基于递归模型的一阶和二阶时空相关性的简化网络的行为与前馈运动能量(ME)模型非常相似。但是,前馈模型无法基于MT中通常高于的二阶时空相关性来捕获全速调谐和方向选择性属性。这些发现支持以下观点:循环网络连通性可能会造成时间延迟以计算速度。此外,该模型解释了运动检测系统为何通常表现为前馈ME网络的原因,尽管解剖证据强烈表明该网络应由循环反馈控制。

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