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Emergency Signal Classification for the Hearing Impaired using Multi-channel Convolutional Neural Network Architecture

机译:使用多通道卷积神经网络架构的听力障碍的应急信号分类

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Hearing impaired people have to tackle a lot of challenges, particularly during emergencies, making them dependent on others. The presence of emergency situations is mostly comprehended through auditory means. This raises a need for developing such systems that sense emergency sounds and communicate it to the deaf effectively. The present study is conducted to differentiate emergency audio signals from non-emergency situations using Multi-Channel Convolutional Neural Networks (CNN). Various data augmentation techniques have been explored, with particular attention to the method of Mixup, in order to improve the performance of the model. The experimental results showed a cross-validation accuracy of 88.28 % and testing accuracy of 88.09 %. To put the model into practical lives of the hearing impaired an android application was developed that made the phone vibrate every time there was an emergency sound. The app could be connected to an android wear device such as a smartwatch that will be with the wearer every time, effectively making them aware of emergency situations.
机译:听证障碍者必须解决很多挑战,特别是在紧急情况下,使他们依赖于他人。通过听觉手段主要理解紧急情况的存在。这提出了需要开发这种系统,感知紧急声音并有效地将其传达给聋人。通过使用多通道卷积神经网络(CNN)来进行本研究以区分来自非紧急情况的紧急音频信号。已经探索了各种数据增强技术,特别注意混合方法,以提高模型的性能。实验结果表明,交叉验证精度为88.28%,测试精度为88.09%。要将模型置于听力的实际生活受损的障碍,开发了一个Android应用程序,使手机每次都有紧急声音时振动。该应用程序可以连接到Android磨损设备,例如每次都与佩戴者一起使用的SmartWatch,有效地使它们意识到紧急情况。

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