Investigation on Machine Learning Approaches for Environmental Noise Classifications

Ali Othman Albaji, R. Rashid, Siti Zeleha Abdul Hamid
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Abstract

This project aims to investigate the best machine learning (ML) algorithm for classifying sounds originating from the environment that were considered noise pollution in smart cities. Sound collection was carried out using necessary sound capture tools, after which ML classification models were utilized for sound recognition. Additionally, noise pollution monitoring using Python was conducted to provide accurate results for sixteen different types of noise that were collected in sixteen cities in Malaysia. The numbers on the diagonal represent the correctly classified noises from the test set. Using these correlation matrices, the F1 score was calculated, and a comparison was performed for all models. The best model was found to be random forest.
环境噪声分类的机器学习方法研究
该项目旨在研究最佳机器学习(ML)算法,用于对智能城市中被认为是噪音污染的环境中发出的声音进行分类。使用必要的声音捕获工具进行声音采集,然后使用ML分类模型进行声音识别。此外,使用Python进行噪音污染监测,为马来西亚16个城市收集的16种不同类型的噪音提供准确的结果。对角线上的数字表示测试集中正确分类的噪声。利用这些相关矩阵计算F1分数,并对所有模型进行比较。最佳模型是随机森林模型。
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