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Fast auralization using radial basis functions type of artificial neural network techniques

机译:利用径向基函数类型的人工神经网络技术快速神经化

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This work presents a new technique to produce fast and reliable auralizations with a computer code for room acoustics simulation. It discusses the binaural room impulse responses generation classic method and presents a new technique using radial basis functions type of artificial neural networks. The radial basis functions type of artificial neural networks is briefly presented and its training and testing procedures are discussed. The artificial neural network models the filtered head-related impulse responses for 64,442 directions uniformly distributed around the head with a significant reduction in computational cost of around 90% in the generation of binaural impulse responses. It is shown that the filtered head-related impulse responses calculated with the classical convolution method and with the artificial neural network technique are almost indistinguishable. It is concluded that the new technique produces fastest and reliable binaural room impulse responses for auralization purposes. (C) 2019 Elsevier Ltd. All rights reserved.
机译:这项工作提出了一种新的技术,可以使用电脑代码测量的计算机代码产生快速可靠的AuralIzations。它讨论了双耳室脉冲响应发电经典方法,并采用径向基函数的人工神经网络造型。简要介绍了人工神经网络的径向基函数类型,并讨论了其培训和测试程序。人工神经网络模拟过滤的头部相关的脉冲响应,对于围绕头部均匀分布的64,422方向,在脉冲脉冲响应的产生中的计算成本显着降低约90%。结果表明,用经典卷积方法和人工神经网络技术计算的过滤的头相关脉冲响应几乎无法区分。结论是,新技术产生最快,可靠的双耳室脉冲响应,用于Auralization目的。 (c)2019 Elsevier Ltd.保留所有权利。

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