SDASAug 29, 2018

Extended playing techniques: The next milestone in musical instrument recognition

arXiv:1808.09730v151 citations
AI Analysis

This work addresses the challenge of query-by-example browsing in massive digital music corpora for musicologists and audio engineers, representing an incremental advance in a domain-specific area.

The paper tackled the problem of automatic identification of instrumental playing techniques (IPTs) from audio recordings, which is underdeveloped compared to instrument recognition, and achieved a precision at rank 5 of 61.0% for IPT recognition, significantly improving over a baseline of 44.5%.

The expressive variability in producing a musical note conveys information essential to the modeling of orchestration and style. As such, it plays a crucial role in computer-assisted browsing of massive digital music corpora. Yet, although the automatic recognition of a musical instrument from the recording of a single "ordinary" note is considered a solved problem, automatic identification of instrumental playing technique (IPT) remains largely underdeveloped. We benchmark machine listening systems for query-by-example browsing among 143 extended IPTs for 16 instruments, amounting to 469 triplets of instrument, mute, and technique. We identify and discuss three necessary conditions for significantly outperforming the traditional mel-frequency cepstral coefficient (MFCC) baseline: the addition of second-order scattering coefficients to account for amplitude modulation, the incorporation of long-range temporal dependencies, and metric learning using large-margin nearest neighbors (LMNN) to reduce intra-class variability. Evaluating on the Studio On Line (SOL) dataset, we obtain a precision at rank 5 of 99.7% for instrument recognition (baseline at 89.0%) and of 61.0% for IPT recognition (baseline at 44.5%). We interpret this gain through a qualitative assessment of practical usability and visualization using nonlinear dimensionality reduction.

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