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Combining Deep Neural Network with SVM to Identify Used in IOT

机译:将深度神经网络与SVM结合以识别IOT中使用的

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Along with the development of science and technology, especially one of internet of things (IOT), products related to IOT have improved human life these days. In IOT-related utility products, it is impossible not to mention devices for smarts city, self-driving cars and especially for smart home. Devices for smarts home are usually controlled by voice. Therefore, voice processing technology is also in need of improvement. Speech processing enhancement that ensures safety in the process helps smart home devices bring about an evolutionary change. In the article, we mainly focus on human voice processing independently od the text. Particularly, we will integrate Convolutional network(CNN) and Suport Vector Machine(SVM) to create a Feature Building Machine. SVMs are often used in speech and image classification, which accordingly is a critical and swift data sorter. The article analyzes the advantages of the combination Deep Neural Network (DNN) and SVMs in speech recognition and is the foundation to develop devices for smart home. The results of the experiment, which was used in the standard Voxcelb database, demonstrate the superiority in sound recognition compared to traditional i-vector methods or other CNN methods.
机译:随着科学技术的发展,尤其是物联网(IOT)之一,近来与物联网相关的产品改善了人们的生活。在与物联网相关的公用事业产品中,不可能不提及用于智慧城市,自动驾驶汽车,尤其是用于智能家居的设备。用于智能家居的设备通常由语音控制。因此,语音处理技术也需要改进。语音处理增强功能可确保过程中的安全性,从而帮助智能家居设备带来演进的变化。在本文中,我们主要关注文本独立于人的语音处理。特别是,我们将集成卷积网络(CNN)和支持向量机(SVM)来创建特征构建机。 SVM通常用于语音和图像分类,因此,SVM是关键且快速的数据分类器。本文分析了结合深度神经网络(DNN)和SVM在语音识别中的优势,这是开发用于智能家居的设备的基础。在标准Voxcelb数据库中使用的实验结果证明,与传统的i-vector方法或其他CNN方法相比,声音识别具有优越性。

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