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Audio-to-symbolic Arrangement via Cross-modal Music Representation Learning

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arxiv 2112.15110 v2 pith:UXZOZGFK submitted 2021-12-30 cs.SD cs.LGeess.AS

Audio-to-symbolic Arrangement via Cross-modal Music Representation Learning

classification cs.SD cs.LGeess.AS
keywords audioarrangementinformationmodeltextureaudio-to-symboliccorruptedcross-modal
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Could we automatically derive the score of a piano accompaniment based on the audio of a pop song? This is the audio-to-symbolic arrangement problem we tackle in this paper. A good arrangement model should not only consider the audio content but also have prior knowledge of piano composition (so that the generation "sounds like" the audio and meanwhile maintains musicality). To this end, we contribute a cross-modal representation-learning model, which 1) extracts chord and melodic information from the audio, and 2) learns texture representation from both audio and a corrupted ground truth arrangement. We further introduce a tailored training strategy that gradually shifts the source of texture information from corrupted score to audio. In the end, the score-based texture posterior is reduced to a standard normal distribution, and only audio is needed for inference. Experiments show that our model captures major audio information and outperforms baselines in generation quality.

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