利用环形神经网络进行交通拥堵声音分类的深度学习方法

Muhammad Ariq Muthi, Putu Harry Gunawan
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引用次数: 0

摘要

交通拥堵已成为世界各地大城市的主要问题之一。如果不认真对待,交通拥堵还会产生负面影响。发生交通拥堵的原因是车辆堆积超过了道路的承载能力。交通拥堵会对城市的效率和生活质量产生负面影响,还会导致更高的油耗、污染和延误。需要有一种方法能够克服和识别这种情况。因此,本研究旨在通过对声音进行分类来减少交通拥堵。作者使用深度学习的卷积神经网络(CNN)方法作为算法模型。该模型采用梅尔频率倒频谱系数(MFCC)作为主要特征提取技术,以捕捉音频信号的基本特征。这项研究有望以较高的准确率对交通拥堵声音进行分类,从而作为克服交通拥堵的一种解决方案。实验使用了训练数据集,并在交通灯路口收集了道路声音数据集进行测试。为了评估所提出的方法,实验结果表明,在对交通拥堵声音进行分类时,训练数据的准确率达到了 97.62%,测试数据的准确率达到了 88.19%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Approach for Traffic Congestion Sound Classification using Circular Neural Networks
Traffic congestion has become one of the main problems that occur in big cities around the world. Traffic congestion also has a negative impact if not handled seriously. Traffic congestion occurs because there is a buildup of vehicle volume that exceeds the capacity of the road. The efficiency and quality of living in cities can be negatively impacted by traffic congestion, which can also result in higher fuel consumption, pollution, and delays. There needs to be a method that can overcome and identify this. Therefore, by classifying sounds, this research aims to reduce traffic congestion. The author uses deep learning with the Convolutional Neural Network (CNN) method as the algorithm model. The model employs Mel-Frequency Cepstral Coefficients (MFCC) as the primary feature extraction technique to capture the essential characteristics of the audio signals. This research is expected to be able to classify traffic congestion sounds with good accuracy, so it can be used as a solution to overcome traffic congestion. Experiments were conducted using a training dataset, and for testing, the road sound dataset has been collected at traffic light intersections. To evaluate the proposed method, the implementation showed promising results, achieving an accuracy of 97.62% on the training data and 88.19% on the test data in classifying traffic congestion sounds.
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