Environment Sound Classification System Based on Hybrid Feature and Convolutional Neural Network
At present, the environment sound recognition system mainly identifies environment sounds with deep neural networks and a wide variety of auditory features. Therefore, it is necessary to analyze which auditory features are more suitable for deep neural networks based ESCR systems. In this paper, we...
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The Northwestern Polytechnical University
2020-02-01
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doaj-e133f03b38f64bbb823ab09bf844509d2021-05-02T19:19:38ZzhoThe Northwestern Polytechnical UniversityXibei Gongye Daxue Xuebao1000-27582609-71252020-02-0138116216910.1051/jnwpu/20203810162jnwpu2020381p162Environment Sound Classification System Based on Hybrid Feature and Convolutional Neural NetworkAt present, the environment sound recognition system mainly identifies environment sounds with deep neural networks and a wide variety of auditory features. Therefore, it is necessary to analyze which auditory features are more suitable for deep neural networks based ESCR systems. In this paper, we chose three sound features which based on two widely used filters:the Mel and Gammatone filter banks. Subsequently, the hybrid feature MGCC is presented. Finally, a deep convolutional neural network is proposed to verify which features are more suitable for environment sound classification and recognition tasks. The experimental results show that the signal processing features are better than the spectrogram features in the deep neural network based environmental sound recognition system. Among all the acoustic features, the MGCC feature achieves the best performance than other features. Finally, the MGCC-CNN model proposed in this paper is compared with the state-of-the-art environmental sound classification models on the UrbanSound 8K dataset. The results show that the proposed model has the best classification accuracy.https://www.jnwpu.org/articles/jnwpu/full_html/2020/01/jnwpu2020381p162/jnwpu2020381p162.htmlenvironment soundhybrid featuresound classificationconvolutional neural networkfilter |
collection |
DOAJ |
language |
zho |
format |
Article |
sources |
DOAJ |
title |
Environment Sound Classification System Based on Hybrid Feature and Convolutional Neural Network |
spellingShingle |
Environment Sound Classification System Based on Hybrid Feature and Convolutional Neural Network Xibei Gongye Daxue Xuebao environment sound hybrid feature sound classification convolutional neural network filter |
title_short |
Environment Sound Classification System Based on Hybrid Feature and Convolutional Neural Network |
title_full |
Environment Sound Classification System Based on Hybrid Feature and Convolutional Neural Network |
title_fullStr |
Environment Sound Classification System Based on Hybrid Feature and Convolutional Neural Network |
title_full_unstemmed |
Environment Sound Classification System Based on Hybrid Feature and Convolutional Neural Network |
title_sort |
environment sound classification system based on hybrid feature and convolutional neural network |
publisher |
The Northwestern Polytechnical University |
series |
Xibei Gongye Daxue Xuebao |
issn |
1000-2758 2609-7125 |
publishDate |
2020-02-01 |
description |
At present, the environment sound recognition system mainly identifies environment sounds with deep neural networks and a wide variety of auditory features. Therefore, it is necessary to analyze which auditory features are more suitable for deep neural networks based ESCR systems. In this paper, we chose three sound features which based on two widely used filters:the Mel and Gammatone filter banks. Subsequently, the hybrid feature MGCC is presented. Finally, a deep convolutional neural network is proposed to verify which features are more suitable for environment sound classification and recognition tasks. The experimental results show that the signal processing features are better than the spectrogram features in the deep neural network based environmental sound recognition system. Among all the acoustic features, the MGCC feature achieves the best performance than other features. Finally, the MGCC-CNN model proposed in this paper is compared with the state-of-the-art environmental sound classification models on the UrbanSound 8K dataset. The results show that the proposed model has the best classification accuracy. |
topic |
environment sound hybrid feature sound classification convolutional neural network filter |
url |
https://www.jnwpu.org/articles/jnwpu/full_html/2020/01/jnwpu2020381p162/jnwpu2020381p162.html |
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1721488582517981184 |