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Partially Shared Deep Neural Network in sound source separation and identification using a UAV-embedded microphone array

机译:使用UAV嵌入式麦克风阵列在声源分离和识别中部分共享的深度神经网络

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This paper addresses sound source separation and identification for noise-contaminated acoustic signals recorded with a microphone array embedded in an Unmanned Aerial Vehicle (UAV), aiming at people's voice detection quickly and widely in a disaster situation. The key approach to achieve this is Deep Neural Network (DNN), but it is well known that training a DNN needs a huge dataset to improve its performance. In a practical application, building such a dataset is not often realistic owing to the cost of manual data annotation. Therefore, we propose a Partially-Shared Deep Neural Network (PS-DNN) which can learn multiple tasks at the same time with a small amount of annotated data. Preliminary results show that the PS-DNN outperforms conventional DNN-based approaches which require fully-annotated data in training in terms of identification accuracy. In addition, it maintains performance even when noise-suppressed signals are used for sound source separation training, and partially annotated data is used for sound source identification training.
机译:本文针对用嵌入式无人机(UAV)中嵌入的麦克风阵列记录的噪声污染声信号的声源分离和识别,旨在在灾难情况下快速,广泛地检测人的声音。实现此目标的关键方法是深度神经网络(DNN),但众所周知,训练DNN需要庞大的数据集以提高其性能。在实际应用中,由于手动数据注释的成本,建立这样的数据集通常不现实。因此,我们提出了一种部分共享的深度神经网络(PS-DNN),该网络可以使用少量带注释的数据同时学习多个任务。初步结果表明,PS-DNN优于传统的基于DNN的方法,后者需要在识别准确性方面进行完全注释的数据训练。此外,即使将抑制噪声的信号用于声源分离训练,而将部分注释的数据用于声源识别训练,它也可以保持性能。

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