A Deep Neural Network-Driven Feature Learning Method For Polyphonic Acoustic Event Detection From Real-Life Recordings

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A Deep Neural Network-Driven Feature Learning Method For Polyphonic Acoustic Event Detection From Real-Life Recordings


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A Deep Neural Network-Driven Feature Learning Method For Polyphonic Acoustic Event Detection From Real-Life Recordings

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In this paper, a Deep Neural Network (DNN)-driven feature learning method for polyphonic Acoustic Event Detection (AED) is proposed. The proposed DNN is a combination of different layers used to characterize multiple overlapped acoustic events in the mixt
In this paper, a Deep Neural Network (DNN)-driven feature learning method for polyphonic Acoustic Event Detection (AED) is proposed. The proposed DNN is a combination of different layers used to characterize multiple overlapped acoustic events in the mixt