A segment-level auto-regressive sequence model for chord recognition reduces oversegmentation and improves performance on complex infrequent chords.
An event-based sequence modeling approach to recognizing non-triad chords with oversegmentation minimization
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Automatic chord recognition (ACR) extracts time-aligned chord labels from music audio recordings. Despite recent advances, ACR still struggles with oversegmentation, data scarcity, and imbalance, especially in recognizing complex chords such as non-triads, which are unpopular in existing datasets. To address these challenges, we reformulate ACR as a segment-level sequence-to-sequence prediction task, where chord sequences are predicted auto-regressively rather than frame by frame. This design mitigates excessive segmentation by detecting chord changes only at segment boundaries. We further introduce two types of token representations and an encoder pre-training method, both specifically designed for time-aligned chord modeling. Experimental results show that our model improves performance in both chord recognition and segmentation, with notable gains for complex and infrequent chord types. These findings demonstrate the effectiveness of segment-level sequence modeling, structured tokenization, and representation learning for advancing chord recognition systems.
fields
cs.SD 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
citing papers explorer
-
An event-based sequence modeling approach to recognizing non-triad chords with oversegmentation minimization
A segment-level auto-regressive sequence model for chord recognition reduces oversegmentation and improves performance on complex infrequent chords.