Department of Computer Science, University of Ghana, Post Office Box 163, Legon, Accra, Ghana.
J Acoust Soc Am. 2021 Apr;149(4):2926. doi: 10.1121/10.0004771.
This study proposes a sound classification model for natural disasters. Deep learning techniques, a convolutional neural network (CNN) and long short-term memory (LSTM), were used to train two individual classifiers. The study was conducted using a dataset acquired online and truncated at 0.1 s to obtain a total of 12 937 sound segments. The result indicated that acoustic signals are effective for classifying natural disasters using machine learning techniques. The classifiers serve as an alternative effective approach to disaster classification. The CNN model obtained a classification accuracy of 99.96%, whereas the LSTM obtained an accuracy of 99.90%. The misclassification rates obtained in this study for the CNN and LSTM classifiers (i.e., 0.4% and 0.1%, respectively) suggest less classification errors when compared to existing studies. Future studies may investigate how to implement such classifiers for the early detection of natural disasters in real time.
本研究提出了一种用于自然灾害的声音分类模型。使用深度学习技术,即卷积神经网络(CNN)和长短时记忆网络(LSTM),训练了两个独立的分类器。该研究使用在线获取的数据集进行,截取 0.1s 以获得总共 12937 个声音片段。结果表明,使用机器学习技术,声信号可有效用于自然灾害分类。分类器是灾害分类的另一种有效方法。CNN 模型的分类准确率为 99.96%,而 LSTM 的准确率为 99.90%。与现有研究相比,本研究中 CNN 和 LSTM 分类器的错误分类率(即分别为 0.4%和 0.1%)表明分类错误较少。未来的研究可以探讨如何实施此类分类器,以便实时进行自然灾害的早期检测。