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Semi-Supervised Singing Voice Separation With Noisy Self-Training

机译:半监督歌唱语音分离与嘈杂的自我训练

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Recent progress in singing voice separation has primarily focused on supervised deep learning methods. However, the scarcity of ground-truth data with clean musical sources has been a problem for long. Given a limited set of labeled data, we present a method to leverage a large volume of unlabeled data to improve the model’s performance. Following the noisy self-training framework, we first train a teacher network on the small labeled dataset and infer pseudo-labels from the large corpus of unlabeled mixtures. Then, a larger student network is trained on combined ground-truth and self-labeled datasets. Empirical results show that the proposed self-training scheme, along with data augmentation methods, effectively leverage the large unlabeled corpus and obtain superior performance compared to supervised methods.
机译:歌唱语音分离的最新进展主要集中在监督的深度学习方法上。 然而,具有清洁音乐来源的地面真实数据的稀缺性是一个很长的问题。 鉴于有限的标记数据集,我们提出了一种利用大量未标记数据来利用的方法来提高模型的性能。 在嘈杂的自我训练框架之后,我们首先在小标签的数据集上培训教师网络,并从未标记的混合物的大语料库推断伪标签。 然后,较大的学生网络培训在组合的地面真实和自我标记的数据集上。 经验结果表明,与监督方法相比,拟议的自我培训方案以及数据增强方法,有效利用大型未标记的语料库,并获得优越的性能。

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