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Hidden Singer: Distinguishing Imitation Singers Based on Training with Only the Original Song

机译:隐藏的歌手:仅根据原始歌曲进行训练即可区分模仿歌手

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Hidden Singer is a television program in Korea. In the show, the original singer and four imitating singers sing a song in hiding behind a screen. The audience and TV viewers attempt to guess who the original singer is by listening to the singing voices. Usually, there are few correct answers from the audience, because the imitators are well trained and highly skilled. We propose a computerized system for distinguishing the original singer from the imitating singers. During the training phase, the system learns only the original singer's song because it is the one the audience has heard before. During the testing phase, the songs of five candidates are provided to the system and the system then determines the original singer. The system uses a 1-class authentication method, in which only a subject model is made. The subject model is used for measuring similarities between the candidate songs. In this problem, unlike other existing studies that require artist identification, we cannot utilize multi-class classifiers and supervised learning because songs of the imitators and the labels are not provided during the training phase. Therefore, we evaluate the performances of several 1-class learning algorithms to choose which one is more efficient in distinguishing an original singer from among highly skilled imitators. The experiment results show that the proposed system using the autoencoder performs better (63.33%) than other 1-class learning algorithms: Gaussian mixture model (GMM) (50%) and one class support vector machines (OCSVM) (26.67%). We also conduct a human contest to compare the performance of the proposed system with human perception. The accuracy of the proposed system is found to be better (63.33%) than the average accuracy of human perception (33.48%).
机译:隐藏的歌手是韩国的电视节目。在节目中,原歌手和四位模仿歌手演唱了一首躲在屏幕后面的歌曲。观众和电视观众试图通过听歌声来猜测谁是原歌手。通常,听众没有正确的答案,因为模仿者训练有素且技术精湛。我们提出了一种计算机化的系统,用于区分模仿模仿歌手的原始歌手。在训练阶段,系统仅学习原始歌手的歌曲,因为它是听众之前听过的。在测试阶段,将五位候选者的歌曲提供给系统,然后系统确定原始歌手。系统使用一类身份验证方法,其中仅创建主题模型。主题模型用于测量候选歌曲之间的相似性。在这个问题上,与其他现有的需要艺术家识别的研究不同,我们无法利用多分类器和监督学习,因为在训练阶段未提供模仿者的歌曲和标签。因此,我们评估了几种1类学习算法的性能,以选择哪种算法在区分高手模仿者中更能区分原始歌手。实验结果表明,提出的使用自动编码器的系统比其他一类学习算法:高斯混合模型(GMM)(50%)和一类支持向量机(OCSVM)(26.67%)表现更好(63.33%)。我们还进行了一次人类竞赛,以比较拟议系统与人类感知的性能。发现所提出系统的准确度要比人类感知的平均准确度(33.48%)更好(63.33%)。

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