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Convolutional neural network trained with synthetic pseudo-images for detecting an acoustic source

机译:卷积神经网络接受了合成伪图像培训,用于检测声源

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摘要

We report a detection method of an acoustic source by the convolutional neural network (CNN) that utilizes analytic predictions of sound radiation. The analytic predictions with various source conditions are implemented to effectively collect a large-annotated training dataset, allowing straightforward utilizations of the CNN in the acoustic domain. The data conversion from the synthetic audio signals into the pseudo-images is presented to secure compatibility with actual audio signals in terms of the direction of angle (DOA) estimation. Our source localization network fully trained with the synthetic pseudo-images were verified with various source conditions in a semi-reverberant room. The verifications demonstrate remarkable robustness and noise resistance to estimate the DOA regardless of source conditions. Moreover, considering our network has implemented a small number of short-time audio signals (i.e., three audio signals for 0.1 s), the proposed algorithm can be a breakthrough in a real-time tracking of the acoustic source by hybridizing analytical and data-driven approaches. (C) 2021 Elsevier Ltd. All rights reserved.
机译:我们通过卷积神经网络(CNN)报告了声学来源的检测方法,其利用声辐射的分析预测。实现具有各种源条件的分析预测以有效地收集大注释的训练数据集,从而允许在声域中的CNN直接利用。从合成音频信号转换到伪图像中的数据转换以在角度(DOA)估计方向上与实际音频信号兼容。我们的源本地化网络完全培训,通过合成伪图像验证,在半回荡室中验证了各种源条件。无论源条件如何,验证都证明了估计DOA的显着稳健性和抗噪声。此外,考虑到我们的网络已经实现了少量的短时间音频信号(即,三个音频信号为0.1秒),所提出的算法可以通过杂交分析和数据来实时跟踪在声学源的实时跟踪中的突破 - 驱动的方法。 (c)2021 elestvier有限公司保留所有权利。

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