Addressing the confounds of accompaniments in singer identification
This work addresses a specific challenge in music information retrieval for applications like content tagging and recommendation, but it is incremental as it builds on existing source separation and data augmentation techniques.
The paper tackles the problem of singer identification being confounded by background instrumental music, which limits generalization to unseen musical contexts, and shows that a data augmentation method using separated vocal and instrumental tracks improves accuracy on the Artist20 benchmark dataset.
Identifying singers is an important task with many applications. However, the task remains challenging due to many issues. One major issue is related to the confounding factors from the background instrumental music that is mixed with the vocals in music production. A singer identification model may learn to extract non-vocal related features from the instrumental part of the songs, if a singer only sings in certain musical contexts (e.g., genres). The model cannot therefore generalize well when the singer sings in unseen contexts. In this paper, we attempt to address this issue. Specifically, we employ open-unmix, an open source tool with state-of-the-art performance in source separation, to separate the vocal and instrumental tracks of music. We then investigate two means to train a singer identification model: by learning from the separated vocal only, or from an augmented set of data where we "shuffle-and-remix" the separated vocal tracks and instrumental tracks of different songs to artificially make the singers sing in different contexts. We also incorporate melodic features learned from the vocal melody contour for better performance. Evaluation results on a benchmark dataset called the artist20 shows that this data augmentation method greatly improves the accuracy of singer identification.