PHALAR: Phasors for Learned Musical Audio Representations
About
Stem retrieval, the task of matching missing stems to a given audio submix, is a key challenge currently limited by models that discard temporal information. We introduce PHALAR, a contrastive framework achieving a relative accuracy increase of up to $\approx 70\%$ over the state-of-the-art while requiring $<50\%$ of the parameters and a 7$\times$ training speedup. By utilizing a Learned Spectral Pooling layer and a complex-valued head, PHALAR enforces pitch-equivariant and phase-equivariant biases. PHALAR establishes new retrieval state-of-the-art across MoisesDB, Slakh, and ChocoChorales, correlating significantly higher with human coherence judgment than semantic baselines. Finally, zero-shot beat tracking and linear chord probing confirm that PHALAR captures robust musical structures beyond the retrieval task.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Beat Tracking | GTZAN | F-measure62.7 | 10 | |
| Subjective Human Correlation for Musical Audio Coherence | MUSDB18 HQ (test) | Pearson ρ0.387 | 9 |