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首页> 外文期刊>Journal of computer sciences >Efficient Music Auto-Tagging with Convolutional Neural Networks
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Efficient Music Auto-Tagging with Convolutional Neural Networks

机译:卷积神经网络的高效音乐自动标记

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摘要

Technology is revolutionizing the way in which music is distributed and consumed. As a result, millions of songs are instantly available to millions of people, on the Internet. This has created the need for novel music search and discovery services. Music is often searched using descriptive keywords, or tags, based on the content of the song. Hence, one very important task in achieving a great music search engine is automatic tagging of music. Currently, deep learning techniques using convolutional neural networks produce state- of-the-art results for this task. Several deep learning algorithms are able to achieve good results but at the cost of efficiency. As neural networks get deeper, the cost of computation grows exponentially. In this paper, we present a deep learning-based ensemble method that achieves near state-of-the-art performance on the music auto-tagging task. Our method is significantly more efficient in terms of computation time and disk space. This opens up the option of using our proposed model directly on a mobile device.
机译:技术正在彻底改变音乐的分发和消费方式。结果,数百万首歌曲可以在Internet上即时提供给数百万人。这产生了对新颖的音乐搜索和发现服务的需求。通常根据歌曲的内容使用描述性关键字或标签搜索音乐。因此,实现出色的音乐搜索引擎的一项非常重要的任务是对音乐进行自动标记。当前,使用卷积神经网络的深度学习技术可为该任务提供最新的结果。几种深度学习算法能够取得良好的结果,但要以效率为代价。随着神经网络的深入,计算成本呈指数增长。在本文中,我们提出了一种基于深度学习的集成方法,该方法可在音乐自动标记任务上实现近乎最新的性能。我们的方法在计算时间和磁盘空间方面显着提高了效率。这提供了直接在移动设备上使用我们建议的模型的选项。

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