Klasifikasi Suara Untuk Memonitori Hutan Berbasis Convolutional Neural Network

Rizqi Fathin Fadhillah, R. Sumiharto
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引用次数: 0

Abstract

Forest has an important role on earth. The need to monitor forest from illegal activities and the types of animals in there is needed to keep the forest in good condition. However, the condition of the vast forest and limited resource make direct forest monitoring by officer (human) is limited. In this case, sound with digital signal processing can be used as a tool for forest monitoring. In this study, a system was implemented to classify sound on the Raspberry Pi 3B+ using mel-spectrogram. Sounds that classified are the sound of chainsaw, gunshot, and the sound of 8 species of bird. This study also compared pretrained VGG-16 and MobileNetV3 as feature extractor, and several classification methods, namely Random Forest, SVM, KNN, and MLP. To vary and increase the number of training data, we used several types of data augmentation, namely add noise, time stretch, time shift, and pitch shift. Based on the result of this study, it was found that the MobileNetV3-Small + MLP model with combined training data from time stretch and time shift augmentation provide the best performance to be implemented in this system, with an inference duration of 0.8 seconds; 93.96% accuracy; and 94.1% precision.
声音分类为基于神经对联性网络的丛林监控
森林在地球上有着重要的作用。需要监测森林中的非法活动和动物类型,以保持森林的良好状态。然而,广阔的森林条件和有限的资源使得官员(人)对森林的直接监测是有限的。在这种情况下,具有数字信号处理的声音可以用作森林监测的工具。在本研究中,实现了一个使用mel声谱图对树莓派3B+上的声音进行分类的系统。分类的声音有电锯声、枪声和8种鸟类的声音。本研究还比较了预训练的VGG-16和MobileNetV3作为特征提取器,以及几种分类方法,即随机森林、SVM、KNN和MLP。为了改变和增加训练数据的数量,我们使用了几种类型的数据增强,即添加噪声、时间拉伸、时间偏移和基音偏移。基于本研究的结果,发现MobileNetV3 Small+MLP模型结合了时间拉伸和时移增强的训练数据,在该系统中实现的性能最好,推理持续时间为0.8秒;准确率93.96%;精密度94.1%。
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