TY - CHAP
T1 - TRAINING DEEP PITCH-CLASS REPRESENTATIONS WITH A MULTI-LABEL CTC LOSS
AU - Weiß, Christof
AU - Peeters, Geoffroy
N1 - Publisher Copyright:
© C. Weiß and G. Peeters.
PY - 2021/1/1
Y1 - 2021/1/1
N2 - Despite the success of end-to-end approaches, chroma (or pitch-class) features remain a useful mid-level representation of music audio recordings due to their direct interpretability. Since traditional chroma variants obtained with signal processing suffer from timbral artifacts such as overtones or vibrato, they do not directly reflect the pitch classes notated in the score. For this reason, training a chroma representation using deep learning (“deep chroma”) has become an interesting strategy. Existing approaches involve the use of supervised learning with strongly aligned labels for which, however, only few datasets are available. Recently, the Connectionist Temporal Classification (CTC) loss, initially proposed for speech, has been adopted to learn monophonic (single-label) pitchclass features using weakly aligned labels based on corresponding score–audio segment pairs. To exploit this strategy for the polyphonic case, we propose the use of a multilabel variant of this CTC loss, the MCTC, and formalize this loss for the pitch-class scenario. Our experiments demonstrate that the weakly aligned approach achieves almost equivalent pitch-class estimates than training with strongly aligned annotations. We then study the sensitivity of our approach to segment duration and mismatch. Finally, we compare the learned features with other pitchclass representations and demonstrate their use for chord and local key recognition on classical music datasets.
AB - Despite the success of end-to-end approaches, chroma (or pitch-class) features remain a useful mid-level representation of music audio recordings due to their direct interpretability. Since traditional chroma variants obtained with signal processing suffer from timbral artifacts such as overtones or vibrato, they do not directly reflect the pitch classes notated in the score. For this reason, training a chroma representation using deep learning (“deep chroma”) has become an interesting strategy. Existing approaches involve the use of supervised learning with strongly aligned labels for which, however, only few datasets are available. Recently, the Connectionist Temporal Classification (CTC) loss, initially proposed for speech, has been adopted to learn monophonic (single-label) pitchclass features using weakly aligned labels based on corresponding score–audio segment pairs. To exploit this strategy for the polyphonic case, we propose the use of a multilabel variant of this CTC loss, the MCTC, and formalize this loss for the pitch-class scenario. Our experiments demonstrate that the weakly aligned approach achieves almost equivalent pitch-class estimates than training with strongly aligned annotations. We then study the sensitivity of our approach to segment duration and mismatch. Finally, we compare the learned features with other pitchclass representations and demonstrate their use for chord and local key recognition on classical music datasets.
UR - https://www.scopus.com/pages/publications/85219639382
M3 - Chapter
AN - SCOPUS:85219639382
T3 - Proceedings of the International Society for Music Information Retrieval Conference
SP - 754
EP - 761
BT - Proceedings of the International Society for Music Information Retrieval Conference
PB - International Society for Music Information Retrieval
ER -