Neural computations as multidimensional feature mapping for acoustic information representation

Kunsan Wang
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Abstract

Neurons in biological systems usually exhibit distinctive response selectivity to certain features in the stimulus. As the neurons are functionally and spatially segregated, one may interpret the computational principles of the neural systems as a mechanism of feature mapping, which represents information in a topographic fashion. In this article, the author summarizes the physiological findings of the neural selectivities in the primary auditory cortex and, based on which, proposes a mathematical framework for mapping the acoustic features conveyed in the power spectrum. The author further demonstrates how this model may be employed to explain a series of psychoacoustic experiments that are designed to measure the sensitivity of the human auditory system to spectral shape perception, and hypothesizes how the measured thresholds may be related to the model parameters.<>
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神经网络计算作为声学信息表示的多维特征映射
生物系统中的神经元通常对刺激的某些特征表现出独特的反应选择性。由于神经元在功能和空间上是分离的,人们可以将神经系统的计算原理解释为一种特征映射机制,它以地形的方式表示信息。本文总结了初级听觉皮层神经选择性的生理学研究成果,并在此基础上提出了一种映射功率谱中传递的声学特征的数学框架。作者进一步论证了该模型如何用于解释一系列心理声学实验,这些实验旨在测量人类听觉系统对光谱形状感知的敏感性,并假设测量的阈值如何与模型参数相关。
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