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Hierarchical Bayesian inference in the visual cortex

机译:视觉皮层中的多层贝叶斯推理

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Traditional views of visual processing suggest that early visual neurons in areas V1 and V2 are static spatiotemporal filters that extract local features from a visual scene. The extracted information is then channeled through a feedforward chain of modules in successively higher visual areas for further analysis. Recent electrophysiological recordings from early visual neurons in awake behaving monkeys reveal that there are many levels of complexity in the information processing of the early visual cortex, as seen in the long-latency responses of its neurons. These new findings suggest that activity in the early visual cortex is tightly coupled and highly interactive with the rest of the visual system. They lead us to propose a new theoretical setting based on the mathematical framework of hierarchical Bayesian inference for reasoning about the visual system. In this framework, the recurrent feedforward/feedback loops in the cortex serve to integrate top-down contextual priors and bottom-up observations so as to implement concurrent probabilistic inference along the visual hierarchy. We suggest that the algorithms of particle filtering and Bayesian-belief propagation might model these interactive cortical computations. We review some recent neurophysiological evidences that support the plausibility of these ideas.
机译:传统的视觉处理观点表明,区域V1和V2中的早期视觉神经元是静态时空过滤器,可从视觉场景中提取局部特征。然后,将提取的信息通过依次位于较高视觉区域的模块前馈链进行引导,以进行进一步分析。从醒着的猴子中的早期视觉神经元获得的最新电生理记录表明,从早期视觉皮质的信息处理中可以看到许多复杂程度,如其神经元的长时延响应所示。这些新发现表明,早期视觉皮层中的活动与视觉系统的其余部分紧密耦合并高度互动。他们引导我们基于层次贝叶斯推理的数学框架为视觉系统的推理提出了一个新的理论背景。在此框架中,皮质中的递归前馈/反馈循环用于整合自上而下的上下文先验和自下而上的观察,从而沿视觉层次实现并发概率推断。我们建议,粒子滤波和贝叶斯信度传播算法可以为这些交互式皮层计算建模。我们回顾了一些最近的神经生理学证据,这些证据支持了这些想法的合理性。

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