基于深度神经网络的复音事件检测的滤波器库学习

Emre Çakir, Ezgi C. Ozan, T. Virtanen
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引用次数: 30

摘要

与传统方法(如高斯混合模型)相比,深度学习技术(如深度前馈神经网络和深度卷积神经网络)最近被证明可以提高声音事件检测的性能。这种改进的关键因素之一是深度架构能够自动学习每层中更高级别的声学特征。在这项工作中,我们的目标是将深度架构的特征学习能力与人类感知的经验知识结合起来。我们使用深度神经网络的第一层来学习从高分辨率幅度谱到较少频带的映射,这有效地学习了用于声音事件检测任务的滤波器组。我们初始化第一个隐藏层权重以匹配感知激发的mel滤波器组幅度响应。我们还通过使用适当约束的深度卷积神经网络将该初始化方案与上下文窗口集成。所提出的方法不仅具有更好的检测精度,而且还提供了更好地识别给定声音事件所必需的频率的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Filterbank learning for deep neural network based polyphonic sound event detection
Deep learning techniques such as deep feedforward neural networks and deep convolutional neural networks have recently been shown to improve the performance in sound event detection compared to traditional methods such as Gaussian mixture models. One of the key factors of this improvement is the capability of deep architectures to automatically learn higher levels of acoustic features in each layer. In this work, we aim to combine the feature learning capabilities of deep architectures with the empirical knowledge of human perception. We use the first layer of a deep neural network to learn a mapping from a high-resolution magnitude spectrum to smaller amount of frequency bands, which effectively learns a filterbank for the sound event detection task. We initialize the first hidden layer weights to match with the perceptually motivated mel filterbank magnitude response. We also integrate this initialization scheme with context windowing by using an appropriately constrained deep convolutional neural network. The proposed method does not only result with better detection accuracy, but also provides insight on the frequencies deemed essential for better discrimination of given sound events.
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