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Recurrent network for multisensory integration-identification of common sources of audiovisual stimuli

机译:递归网络用于多感官整合-视听刺激的常见来源识别

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摘要

We perceive our surrounding environment by using different sense organs. However, it is not clear how the brain estimates information from our surroundings from the multisensory stimuli it receives. While Bayesian inference provides a normative account of the computational principle at work in the brain, it does not provide information on how the nervous system actually implements the computation. To provide an insight into how the neural dynamics are related to multisensory integration, we constructed a recurrent network model that can implement computations related to multisensory integration. Our model not only extracts information from noisy neural activity patterns, it also estimates a causal structure; i.e., it can infer whether the different stimuli came from the same source or different sources. We show that our model can reproduce the results of psychophysical experiments on spatial unity and localization bias which indicate that a shift occurs in the perceived position of a stimulus through the effect of another simultaneous stimulus. The experimental data have been reproduced in previous studies using Bayesian models. By comparing the Bayesian model and our neural network model, we investigated how the Bayesian prior is represented in neural circuits.
机译:我们通过使用不同的感觉器官来感知周围的环境。但是,尚不清楚大脑如何从其接收的多感觉刺激中估计出周围环境中的信息。尽管贝叶斯推论提供了大脑中计算原理的规范解释,但它并未提供有关神经系统实际如何执行计算的信息。为了深入了解神经动力学与多感觉整合的关系,我们构建了一个递归网络模型,该模型可以实现与多感觉整合有关的计算。我们的模型不仅从嘈杂的神经活动模式中提取信息,而且还估计了因果关系;即,它可以推断出不同的刺激来自同一来源还是不同来源。我们表明,我们的模型可以重现关于空间统一性和局部偏见的心理物理实验的结果,这些结果表明通过另一种同时刺激的作用,在刺激的感知位置发生了偏移。实验数据已在以前的研究中使用贝叶斯模型进行了复制。通过比较贝叶斯模型和我们的神经网络模型,我们研究了神经电路中贝叶斯先验是如何表示的。

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