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A Primer on Deep Learning Architectures and Applications in Speech Processing

机译:语音处理中深度学习架构和应用的底漆

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In the recent past years, deep-learning-based machine learning methods have demonstrated remarkable success for a wide range of learning tasks in multiple domains. They are suitable for complex classification and regression problems in applications such as computer vision, speech recognition and other pattern analysis branches. The purpose of this article is to contribute a timely review and introduction of state-of-the-art and popular discriminative DNN, CNN and RNN deep learning techniques, the basic framework and algorithms, hardware implementations, applications in speech, and the overall benefits of deep learning.
机译:在近年来,基于深度学习的机器学习方法对多个域中的广泛学习任务进行了显着的成功。它们适用于计算机视觉,语音识别和其他模式分析等应用中的复杂分类和回归问题。本文的目的是提供及时审查和引入最先进的和流行的歧视技术,CNN和RNN深度学习技术,基本框架和算法,硬件实现,语音中的应用以及整体好处深度学习。

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