Ahmad Nasir, Higgins Irina, Walker Kerry M M, Stringer Simon M
Department of Experimental Psychology, Oxford Centre for Theoretical Neuroscience and Artificial Intelligence, University of Oxford Oxford, UK.
Department of Physiology, Anatomy and Genetics, University of Oxford Oxford, UK.
Front Comput Neurosci. 2016 Mar 23;10:24. doi: 10.3389/fncom.2016.00024. eCollection 2016.
Attempting to explain the perceptual qualities of pitch has proven to be, and remains, a difficult problem. The wide range of sounds which elicit pitch and a lack of agreement across neurophysiological studies on how pitch is encoded by the brain have made this attempt more difficult. In describing the potential neural mechanisms by which pitch may be processed, a number of neural networks have been proposed and implemented. However, no unsupervised neural networks with biologically accurate cochlear inputs have yet been demonstrated. This paper proposes a simple system in which pitch representing neurons are produced in a biologically plausible setting. Purely unsupervised regimes of neural network learning are implemented and these prove to be sufficient in identifying the pitch of sounds with a variety of spectral profiles, including sounds with missing fundamental frequencies and iterated rippled noises.
事实证明,试图解释音高的感知特性一直是个难题。引发音高的声音范围广泛,而且神经生理学研究在音高如何由大脑编码这一问题上缺乏共识,这使得这项尝试变得更加困难。在描述音高可能被处理的潜在神经机制时,已经提出并实现了许多神经网络。然而,尚未证明有任何具有生物学精确性耳蜗输入的无监督神经网络。本文提出了一个简单的系统,在这个系统中,代表音高的神经元是在生物学上合理的环境中产生的。实现了神经网络学习的纯无监督机制,事实证明这些机制足以识别具有各种频谱特征的声音的音高,包括基频缺失的声音和迭代波纹噪声。