Nandy D, Ben-Arie J
Department of Electrical and Computer Engineering, University of Illinois at Chicago, Chicago, IL, USA.
Neurol Res. 2001 Jul;23(5):489-500. doi: 10.1179/016164101101198884.
In this paper we analyze several auditory localization neural models that are based on head related transfer functions (HRTFs). HRTFs represent the combined directional-spectral response of the pinnae head and torso. The role of HRTFs in such modeling has hitherto been underestimated despite substantial experimental evidence to its relevance in spatial hearing, especially in determining direction of high-frequency sound sources. In the first section we suggest a neural model that links the physiology of binaural processing to a neural network that extracts spectral ratios. These ratios correspond to HRTFs ratios and can provide auditory directional cues. Next, we compare several methods of matching HRTFs ratios using discriminative matching measure (DMM). We consider several solutions to the matching problem from a neural signal processing viewpoint. We compare correlation based approaches with DMM optimization approach and with a non-linear approach based on neural back-propagation algorithm. All three models can be implemented by neural networks. Finally, we include experimental results of simulations that are conducted using these methods. Experiments show that the back-propagation based neural network yields the best results in terms of DMM both for narrow-band and broad band excitation. The back-propagation neural network is also superior in matching noisy HRTF ratio vectors.
在本文中,我们分析了几种基于头部相关传递函数(HRTF)的听觉定位神经模型。HRTF代表耳廓、头部和躯干的综合方向 - 频谱响应。尽管有大量实验证据表明HRTF在空间听觉中具有相关性,特别是在确定高频声源方向方面,但HRTF在这种建模中的作用迄今一直被低估。在第一部分中,我们提出了一种神经模型,该模型将双耳处理的生理学与一个提取频谱比率的神经网络联系起来。这些比率对应于HRTF比率,并可以提供听觉方向线索。接下来,我们使用判别匹配度量(DMM)比较几种匹配HRTF比率的方法。我们从神经信号处理的角度考虑了匹配问题的几种解决方案。我们将基于相关性的方法与DMM优化方法以及基于神经反向传播算法的非线性方法进行比较。所有这三种模型都可以由神经网络实现。最后,我们给出了使用这些方法进行模拟的实验结果。实验表明,对于窄带和宽带激励,基于反向传播的神经网络在DMM方面产生了最佳结果。反向传播神经网络在匹配有噪声的HRTF比率向量方面也更具优势。