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Deep Learning-Based Hazardous Sound Classification for the Hard of Hearing and Deaf

机译:基于深度学习的危险声音分类,对听力和聋哑人来说

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The hard of hearing or deaf can only access limited auditory information in dangerous situations. Therefore, development of a system for sensing hazardous auditory information may be of great help to them. However, such systems have focused on effective signal transduction when a hazardous sound is detected, and the classification of hazardous sounds has been less investigated. The present study was conducted to classify sounds by using Recurrent Neural Network (RNN)-based models, Convolutional Neural Network (CNN)-based models, the combination of the two models, and ensemble models prepared by combining various models. The experimental results showed that the accuracy of the 3-layer Long Short-Term Memory (LSTM) model was 97.63% and that of the ensemble model was 98.00%. As an attempt at real-life application of the developed model, a warning system was prepared by using Raspberry Pi and a vibrator.
机译:听力或聋人只能在危险情况下访问有限的听觉信息。因此,开发用于传感危险听觉信息的系统可能对它们有很大的帮助。然而,这种系统在检测到危险声音时,这些系统集中在有效的信号转导,并且危险声音的分类较少被调查。通过使用经常性神经网络(RNN)的模型,卷积神经网络(CNN)基础的模型,两种模型的组合以及通过组合各种模型来组合来分类所述声音。实验结果表明,3层长短期记忆(LSTM)模型的准确性为97.63 %,集合模型的精度为98.00 %。作为开发模型的实际应用的尝试,通过使用覆盆子PI和振动器来制备警告系统。

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