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A Robust Cover Song Identification System with Two-Level Similarity Fusion and Post-Processing

机译:具有两级相似融合和后处理功能的鲁棒翻唱识别系统

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Similarity measurement plays an important role in various information retrieval tasks. In this paper, a music information retrieval scheme based on two-level similarity fusion and post-processing is proposed. At the similarity fusion level, to take full advantage of the common and complementary properties among different descriptors and different similarity functions, first, the track-by-track similarity graphs generated from the same descriptor but different similarity functions are fused with the similarity network fusion (SNF) technique. Then, the obtained first-level fused similarities based on different descriptors are further fused with the mixture Markov model (MMM) technique. At the post-processing level, diffusion is first performed on the two-level fused similarity graph to utilize the underlying track manifold contained within it. Then, a mutual proximity (MP) algorithm is adopted to refine the diffused similarity scores, which helps to reduce the bad influence caused by the “hubness” phenomenon contained in the scores. The performance of the proposed scheme is tested in the cover song identification (CSI) task on three cover song datasets (Covers80, Covers40, and Second Hand Songs (SHS)). The experimental results demonstrate that the proposed scheme outperforms state-of-the-art CSI schemes based on single similarity or similarity fusion.
机译:相似性度量在各种信息检索任务中起着重要作用。提出了一种基于两级相似度融合和后处理的音乐信息检索方案。在相似度融合级别上,要充分利用不同描述符和不同相似度函数之间的共有和互补特性,首先,将由相同描述符但不同相似度函数生成的逐轨相似度图与相似度网络融合相融合(SNF)技术。然后,将基于不同描述符的第一级融合相似度进一步与混合马尔可夫模型(MMM)技术融合。在后处理级别,首先对两级融合相似度图进行扩散,以利用其中包含的基础轨道流形。然后,采用相互接近度(MP)算法对扩散的相似度分数进行细化,这有助于减少分数中包含的“虚度”现象造成的不良影响。在三个翻唱歌曲数据集(Covers80,Covers40和二手歌曲(SHS))的翻唱歌曲识别(CSI)任务中测试了所提出方案的性能。实验结果表明,所提出的方案优于基于单个相似性或相似性融合的最新CSI方案。

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