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Cover Song Identification Using Song-to-Song Cross-Similarity Matrix with Convolutional Neural Network

机译:使用歌曲跨相似性矩阵与卷积神经网络覆盖歌曲识别

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In this paper, we propose a cover song identification algorithm using a convolutional neural network (CNN). We first train the CNN model to classify any non-/cover relationship, by feeding a cross-similarity matrix that is generated from a pair of songs as an input. Our main idea is to use the CNN output-the cover-probabilities of one song to all other candidate songs-as a new representation vector for measuring the distance between songs. Based on this, the present algorithm searches cover songs by applying several ranking methods: 1. sorting without using the representation vectors; 2. the cosine distance between the representation vectors; and 3. the correlation between the vectors. In our experiment, the proposed algorithm significantly outperformed the algorithms used in recent studies, by achieving a mean average precision (MAP) of 93.18% in a dataset consisting of 3,300 cover-pairs and 496,200 non-cover-pairs.
机译:在本文中,我们提出了一种使用卷积神经网络(CNN)的封面歌曲识别算法。我们首先首先训练CNN模型来分类任何非/覆盖关系,通过从一对歌曲作为输入中生成的跨相似性矩阵进行馈送。我们的主要思想是使用CNN输出 - 一首歌的封面概率到所有其他候选歌曲 - 作为用于测量歌曲之间距离的新的表示向量。基于此,本算法通过应用多个排名方法搜索封面歌曲:1。在不使用表示向量的情况下进行排序; 2.代表向量之间的余弦距离; 3.矢量之间的相关性。在我们的实验中,所提出的算法通过在由3,300个盖子对组成的数据集中的平均平均精度(MAP)和496,200非盖子对组成的数据集中为93.18%的平均平均精度(MAP),显着优于最近研究的算法。

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