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Incorporating Noise Robustness in Speech Command Recognition by Noise Augmentation of Training Data

机译:通过训练数据的噪声增强将噪声鲁棒性纳入语音命令识别中

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摘要

The advent of new devices, technology, machine learning techniques, and the availability of free large speech corpora results in rapid and accurate speech recognition. In the last two decades, extensive research has been initiated by researchers and different organizations to experiment with new techniques and their applications in speech processing systems. There are several speech command based applications in the area of robotics, IoT, ubiquitous computing, and different human-computer interfaces. Various researchers have worked on enhancing the efficiency of speech command based systems and used the speech command dataset. However, none of them catered to noise in the same. Noise is one of the major challenges in any speech recognition system, as real-time noise is a very versatile and unavoidable factor that affects the performance of speech recognition systems, particularly those that have not learned the noise efficiently. We thoroughly analyse the latest trends in speech recognition and evaluate the speech command dataset on different machine learning based and deep learning based techniques. A novel technique is proposed for noise robustness by augmenting noise in training data. Our proposed technique is tested on clean and noisy data along with locally generated data and achieves much better results than existing state-of-the-art techniques, thus setting a new benchmark.
机译:新设备,技术,机器学习技术的出现以及免费的大型语音语料库的出现导致了语音识别的快速和准确。在过去的二十年中,研究人员和不同的组织发起了广泛的研究,以试验新技术及其在语音处理系统中的应用。在机器人技术,物联网,普适计算和不同的人机界面领域中,有几种基于语音命令的应用程序。许多研究人员致力于提高基于语音命令的系统的效率,并使用了语音命令数据集。但是,它们都不能同时满足噪音的要求。噪声是任何语音识别系统中的主要挑战之一,因为实时噪声是影响语音识别系统(尤其是那些没有有效学习噪声的系统)性能的通用性和不可避免的因素。我们全面分析语音识别的最新趋势,并评估基于不同的基于机器学习和基于深度学习的技术的语音命令数据集。通过增加训练数据中的噪声,提出了一种用于噪声鲁棒性的新技术。我们提出的技术已经在干净,嘈杂的数据以及本地生成的数据上进行了测试,并且比现有的最新技术获得了更好的结果,从而树立了新的标杆。

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