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Sound Event Detection Based on Beamformed Convolutional Neural Network Using Multi-Microphones

机译:基于多麦克风波束形成卷积神经网络的声音事件检测

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This paper presents a real environment sound event detection method based on pre-processing technology. Our goal is to improve the performance of the sound event detection using a pre-processing module called parameterized multi-channel non-causal Wiener filter (PMWF). First, we convert the existing 1 channel data to 2 channels through the Room impulse response generator (RIR) module. The reason for 2-channel conversion is that PMWF requires multiple channels for beamforming. Noise cancellation is performed through PMWF and the results are derived through the proposed convolutional neural network model. As a result, we found that this method has a good effect on real-time sound event detection, and we found that peak normalization and median filter also have a good effect.
机译:本文提出了一种基于预处理技术的真实环境声音事件检测方法。我们的目标是使用称为参数化多通道非因果维纳滤波器(PMWF)的预处理模块提高声音事件检测的性能。首先,我们通过房间脉冲响应生成器(RIR)模块将现有的1通道数据转换为2通道。 2通道转换的原因是PMWF需要多个通道进行波束成形。通过PMWF进行噪声消除,并通过提出的卷积神经网络模型得出结果。结果,我们发现该方法对实时声音事件检测具有良好的效果,并且我们发现峰值归一化和中值滤波也具有良好的效果。

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