Dynamic cell assemblies and vowel sound categorization

O. Hoshino, K. Mitsunaga, M. Miyamoto, K. Kuroiwa
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Abstract

By simulating a neural network model we investigated roles of background spectral components of vowel sounds in the neuronal representation of vowel sounds. The model consists of two networks, by which vowel sounds are processed in a hierarchical manner. The first network, which is tonotopically organized, detects spectral peaks called first and second formant frequencies (F1 and F2). The second network has a tonotopic two-dimensional structure and receives input from the first network in a convergent manner. The second network detects the combinatory information of the first (F1) and second (F2) formant frequencies of vowel sounds. We trained the model with five Japanese vowels spoken by different people and modified synaptic connection strengths of the second network according to the Hebbian learning rule, by which relevant dynamic cell assemblies expressing categories of vowels were organized. We show that for creating the dynamic cell assemblies background components around two-formant peaks (F1, F2) are not necessary but advantageous for the creation of the cell assemblies.
动态单元组合和元音分类
通过模拟神经网络模型,研究了元音背景谱成分在元音神经元表征中的作用。该模型由两个网络组成,通过两个网络,元音以分层的方式进行处理。第一个网络是拓扑组织的,检测称为第一和第二形成峰频率的频谱峰(F1和F2)。第二网络具有同位二维结构,并以收敛方式接收来自第一网络的输入。第二个网络检测元音的第一(F1)和第二(F2)形成峰频率的组合信息。我们使用不同人使用的5个日语元音对模型进行训练,并根据Hebbian学习规则修改第二网络的突触连接强度,通过该规则组织表达元音类别的相关动态细胞集合。我们表明,对于创建动态单元集,双峰峰(F1, F2)周围的背景分量不是必需的,但对单元集的创建是有利的。
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