基于卷积递归神经网络和评分水平融合的环境声分类亚谱图分割

Tianhao Qiao, Shunqing Zhang, Zhichao Zhang, Shan Cao, Shugong Xu
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引用次数: 9

摘要

环境声分类是环境声分类的一个重要而富有挑战性的问题,而特征表示是环境声分类的关键甚至决定性因素。特征表征能力直接影响语音分类的准确性。因此,ESC的性能在很大程度上取决于从环境声音中提取的代表性特征的有效性。本文提出了一种基于子谱图分割的ESC分类框架。此外,我们采用了提出的卷积递归神经网络(CRNN)和评分水平融合来共同提高分类精度。评估了广泛的截断方案,以找到子谱图的最优数量和相应的频带范围。数值实验表明,该框架在公共数据集ESC-50上的ESC分类准确率达到81.9%,比传统基准方案的准确率提高了9.1%。
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Sub-spectrogram Segmentation for Environmental Sound Classification via Convolutional Recurrent Neural Network and Score Level Fusion
Environmental Sound Classification (ESC) is an important and challenging problem, and feature representation is a critical and even decisive factor in ESC. Feature representation ability directly affects the accuracy of sound classification. Therefore, the ESC performance is heavily dependent on the effectiveness of representative features extracted from the environmental sounds. In this paper, we propose a sub-spectrogram segmentation based ESC classification framework. In addition, we adopt the proposed Convolutional Recurrent Neural Network (CRNN) and score level fusion to jointly improve the classification accuracy. Extensive truncation schemes are evaluated to find the optimal number and the corresponding band ranges of sub-spectrograms. Based on the numerical experiments, the proposed framework can achieve 81.9% ESC classification accuracy on the public dataset ESC-50, which provides 9.1% accuracy improvement over traditional baseline schemes.
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