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Olfactory network dynamics and the coding of multidimensional signals

机译:嗅觉网络动力学和多维信号编码

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The brain faces many complex problems when dealing with odorant signals. Odours are multidimensional objects, which we usually experience as unitary percepts. They are also noisy and variable, but we can classify and identify them well. This means that the olfactory system must solve complicated pattern-learning and pattern-recognition problems. I propose that part of the solution relies on a particular architecture that imposes a dynamic format on odour codes. According to this hypothesis, the olfactory system actively creates a large coding space in which to place odour representation and simultaneously optimizes their distribution within it. This process uses both oscillatory and non-periodic dynamic processes with complementary functions: slow non-periodic processes underlie decorrelation, whereas fast oscillations allow sparsening and feature binding.
机译:当处理气味信号时,大脑面临许多复杂的问题。气味是多维对象,我们通常将其视为统一的感知。它们也是嘈杂的,并且可变的,但是我们可以对其进行分类和识别。这意味着嗅觉系统必须解决复杂的模式学习和模式识别问题。我建议该解决方案的一部分依赖于特定的体系结构,该体系结构在气味代码上采用了动态格式。根据该假设,嗅觉系统会主动创建一个较大的编码空间,在其中放置气味表示并​​同时优化它们在其中的分布。此过程同时使用具有互补功能的振荡和非周期性动态过程:缓慢的非周期性过程是去相关的基础,而快速振荡则允许稀疏和特征绑定。

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