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arxiv_ml 85% Match Research Paper Audio Engineers,Music Producers,Sound Designers,Machine Learning Researchers in Audio 2 weeks ago

Improving Inference-Time Optimisation for Vocal Effects Style Transfer with a Gaussian Prior

speech-audio โ€บ audio-generation
๐Ÿ“„ Abstract

Abstract: Style Transfer with Inference-Time Optimisation (ST-ITO) is a recent approach for transferring the applied effects of a reference audio to an audio track. It optimises the effect parameters to minimise the distance between the style embeddings of the processed audio and the reference. However, this method treats all possible configurations equally and relies solely on the embedding space, which can result in unrealistic configurations or biased outcomes. We address this pitfall by introducing a Gaussian prior derived from the DiffVox vocal preset dataset over the parameter space. The resulting optimisation is equivalent to maximum-a-posteriori estimation. Evaluations on vocal effects transfer on the MedleyDB dataset show significant improvements across metrics compared to baselines, including a blind audio effects estimator, nearest-neighbour approaches, and uncalibrated ST-ITO. The proposed calibration reduces the parameter mean squared error by up to 33% and more closely matches the reference style. Subjective evaluations with 16 participants confirm the superiority of our method in limited data regimes. This work demonstrates how incorporating prior knowledge at inference time enhances audio effects transfer, paving the way for more effective and realistic audio processing systems.
Authors (6)
Chin-Yun Yu
Marco A. Martรญnez-Ramรญrez
Junghyun Koo
Wei-Hsiang Liao
Yuki Mitsufuji
Gyรถrgy Fazekas
Submitted
May 16, 2025
arXiv Category
cs.SD
arXiv PDF

Key Contributions

This paper improves inference-time optimization for vocal effects style transfer by introducing a Gaussian prior derived from the DiffVox dataset. This prior regularizes the parameter space, leading to MAP estimation and more realistic configurations compared to methods relying solely on embedding spaces.

Business Value

Enables audio engineers and musicians to achieve more natural and controllable vocal effects, enhancing the quality and efficiency of audio production.