Recognition of Acoustic Events Using Masked Conditional Neural Networks

Fady Medhat, D. Chesmore, John A. Robinson
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引用次数: 5

Abstract

Automatic feature extraction using neural networks has accomplished remarkable success for images, but for sound recognition, these models are usually modified to fit the nature of the multi-dimensional temporal representation of the audio signal in spectrograms. This may not efficiently harness the time-frequency representation of the signal. The ConditionaL Neural Network (CLNN) takes into consideration the interrelation between the temporal frames, and the Masked ConditionaL Neural Network (MCLNN) extends upon the CLNN by forcing a systematic sparseness over the network’s weights using a binary mask. The masking allows the network to learn about frequency bands rather than bins, mimicking a filterbank used in signal transformations such as MFCC. Additionally, the Mask is designed to consider various combinations of features, which automates the feature hand-crafting process. We applied the MCLNN for the Environmental Sound Recognition problem using the Urbansound8k, YorNoise, ESC-10 and ESC-50 datasets. The MCLNN have achieved competitive performance compared to state-of-the-art Convolutional Neural Networks and hand-crafted attempts.
基于掩模条件神经网络的声事件识别
使用神经网络的自动特征提取在图像识别方面取得了显著的成功,但对于声音识别,这些模型通常需要修改以适应频谱图中音频信号的多维时间表征的性质。这可能不能有效地利用信号的时频表示。条件神经网络(CLNN)考虑了时间帧之间的相互关系,而掩码条件神经网络(MCLNN)在CLNN的基础上进行了扩展,通过使用二进制掩码强制网络权重的系统稀疏性。屏蔽允许网络学习频带而不是桶,模仿信号转换中使用的滤波器组,如MFCC。此外,掩模的设计考虑了各种特征的组合,使特征手工制作过程自动化。我们使用Urbansound8k, YorNoise, ESC-10和ESC-50数据集将MCLNN应用于环境声音识别问题。与最先进的卷积神经网络和手工制作的尝试相比,MCLNN已经取得了具有竞争力的性能。
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