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SynthTab: Leveraging Synthesized Data for Guitar Tablature Transcription

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arxiv 2309.09085 v4 pith:N72J3P7B submitted 2023-09-16 cs.SD cs.IRcs.MMeess.ASeess.SP

SynthTab: Leveraging Synthesized Data for Guitar Tablature Transcription

classification cs.SD cs.IRcs.MMeess.ASeess.SP
keywords tablatureguitarsynthtabtranscriptionaudiodatadatasetexperiments
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Guitar tablature is a form of music notation widely used among guitarists. It captures not only the musical content of a piece, but also its implementation and ornamentation on the instrument. Guitar Tablature Transcription (GTT) is an important task with broad applications in music education, composition, and entertainment. Existing GTT datasets are quite limited in size and scope, rendering models trained on them prone to overfitting and incapable of generalizing to out-of-domain data. In order to address this issue, we present a methodology for synthesizing large-scale GTT audio using commercial acoustic and electric guitar plugins. We procure SynthTab, a dataset derived from DadaGP, which is a vast and diverse collection of richly annotated symbolic tablature. The proposed synthesis pipeline produces audio which faithfully adheres to the original fingerings and a subset of techniques specified in the tablature, and covers multiple guitars and styles for each track. Experiments show that pre-training a baseline GTT model on SynthTab can improve transcription performance when fine-tuning and testing on an individual dataset. More importantly, cross-dataset experiments show that pre-training significantly mitigates issues with overfitting.

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