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Supervised Deep Hashing for Highly Efficient Cover Song Detection

机译:有监督的深度哈希功能可高效检测乐曲

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This paper proposes a supervised deep hashing approach for highly efficient and effective cover song detection. Our system consists of two identical sub-neural networks, each one having a hash layer to learn a binary representations of input audio in the form of spectral features. A loss function joins the two outputs of the sub-networks by minimizing the Hamming distance for a pair of audio files covering the same music work. We further enhance system performance by loudness embedding, beat synchronization, and early fusion of input audio features. The output of 128-bit hash reaches state-of-the-art performance with mean pairwise accuracy. This system demonstrates the possibility of memory-efficient and real-time efficient cover song detection with satisfiable accuracy in large scale.
机译:本文提出了一种监督的深度哈希方法,用于高效,有效的翻唱歌曲检测。我们的系统由两个相同的子神经网络组成,每个子神经网络都有一个哈希层,以学习频谱特征形式的输入音频的二进制表示形式。丢失功能通过最小化覆盖同一音乐作品的一对音频文件的汉明距离来将子网的两个输出连接在一起。我们通过响度嵌入,节拍同步和输入音频功能的早期融合进一步增强了系统性能。 128位哈希的输出以成对的平均精度达到了最先进的性能。该系统演示了具有可记忆性和实时性的大规模翻唱歌曲检测的可能性,并且准确性令人满意。

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