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Sound quality prediction and improving of vehicle interior noise based on deep convolutional neural networks

机译:基于深度卷积神经网络的车辆内部噪声的音质预测及改进

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Interior sound quality plays a vital role in vehicle quality assessment because it forms users' general impressions of vehicles and influences consumers' purchase intentions. Thus, evaluating vehicle interior sound quality is important. Many researchers have developed intelligent prediction models to precisely evaluate vehicle interior sound quality. Deep convolutional neural networks (CNNs) can automatically learn features and many studies have applied deep CNNs to address noise and vibration issues. However, those studies suffer from two problems: i) the time and frequency characteristics of noise that influence interior sound quality have not been considered simultaneously; ii) the noise features that deep CNNs have learned need to be explored. Therefore, in this paper, to overcome the first problem, we develop a regularized deep CNN model that takes a noise time-frequency image as input. In addition, we introduce a neuron visualization algorithm for deep CNNs to solve the second problem. To verify the proposed methods, we establish an interior noise dataset through vehicular road tests and subjective evaluations. The sound quality of this recorded interior noise is evaluated through the developed deep CNN model, which reveals that deep CNNs that use a noise time-frequency image as input perform better than do those using time vector and frequency vector data as input. By analyzing feature maps extracted from the convolutional layers and the fully connected layer of the CNNs, we found that the deep CNN feature learning process can be regarded as color filter and Gabor filter processes applied to the noise time- frequency image. These results provide a new approach for evaluating vehicle interior sound quality and help in understanding which noise features deep CNNs learn. (c) 2020 Elsevier Ltd. All rights reserved.
机译:内部音质在车辆质量评估中起着至关重要的作用,因为它形成了用户的普遍印象,并影响消费者的购买意图。因此,评估车辆内部音质很重要。许多研究人员已经开发出智能预测模型,精确地评估车辆内部音质。深度卷积神经网络(CNNS)可以自动学习特征,许多研究应用了深入的CNN来解决噪声和振动问题。然而,这些研究遭受了两个问题:i)影响内部音质的噪声的时间和频率特性尚未同时考虑; ii)需要探索深度CNN的噪声功能。因此,在本文中,为了克服第一问题,我们开发了一个正则化的深度CNN模型,其将噪声时间频率图像作为输入。此外,我们介绍了一个用于深CNN的神经元可视化算法来解决第二个问题。为了验证所提出的方法,我们通过车辆道路测试和主观评估建立内部噪声数据集。通过开发的深度CNN模型评估了该记录内部噪声的声音质量,该模型揭示使用噪声时频图像的深度CNN,与使用时间向量和频率向量数据作为输入执行那些。通过分析从卷积层提取的特征图和CNN的完全连接层,我们发现深度CNN特征学习过程可以被视为滤色器和施加到噪声时频图像的GABOR滤波器过程。这些结果提供了一种评估车辆内部音质的新方法,并帮助了解哪些噪声具有深度CNN的学习。 (c)2020 elestvier有限公司保留所有权利。

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