Stabilizing Training with Soft Dynamic Time Warping: A Case Study for Pitch Class Estimation with Weakly Aligned Targets

Zeitler J, Deniffel S, Krause M, Müller M (2023)


Publication Type: Conference contribution, Conference Contribution

Publication year: 2023

Conference Proceedings Title: Proceedings of the 24th International Society for Music Information Retrieval Conference

Event location: Milan, Italy

Abstract

Soft dynamic time warping (SDTW) is a differentiable loss function that allows for training neural networks from weakly aligned data. Typically, SDTW is used to iteratively compute and refine soft alignments that compensate for temporal deviations between the training data and its weakly annotated targets. One major problem is that a mismatch between the estimated soft alignments and the reference alignments in the early training stage leads to incorrect parameter updates, making the overall training procedure unstable. In this paper, we investigate such stability issues by considering the task of pitch class estimation from music recordings as an illustrative case study. In particular, we introduce and discuss three conceptually different strategies (a hyperparameter scheduling, a diagonal prior, and a sequence unfolding strategy) with the objective of stabilizing intermediate soft alignment results. Finally, we report on experiments that demonstrate the effectiveness of the strategies and discuss efficiency and implementation issues.

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How to cite

APA:

Zeitler, J., Deniffel, S., Krause, M., & Müller, M. (2023). Stabilizing Training with Soft Dynamic Time Warping: A Case Study for Pitch Class Estimation with Weakly Aligned Targets. In Proceedings of the 24th International Society for Music Information Retrieval Conference. Milan, Italy.

MLA:

Zeitler, Johannes, et al. "Stabilizing Training with Soft Dynamic Time Warping: A Case Study for Pitch Class Estimation with Weakly Aligned Targets." Proceedings of the 24th International Society for Music Information Retrieval (ISMIR) Conference, Milan, Italy 2023.

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