VoxEffects: A Speech-Oriented Audio Effects Dataset and Benchmark
Abstract
Speech audio in the wild is often processed by post-production effects, but existing speech datasets rarely provide precise annotations of effects and parameters, limiting systematic study. We introduce VoxEffects, a speech audio effects dataset that pairs produced speech with exact effect-chain supervision at multiple granularities. VoxEffects supports speech-oriented audio effect identification: given a produced waveform, infer which effects are present and how they are applied. Built from minimally edited clean speech, it provides an extensible rendering pipeline for both offline synthesis and on-the-fly rendering for efficient training and evaluation. The audio effect identification benchmark includes effect presence detection, preset classification, and intensity prediction, with a robustness protocol covering capture-side and platform-side degradations. We provide an AudioMAE-based multi-task baseline and analyses of domain shift, robustness, input duration, and gender fairness.
Cite
@article{arxiv.2604.12389,
title = {VoxEffects: A Speech-Oriented Audio Effects Dataset and Benchmark},
author = {Zhe Zhang and Yigitcan Özer and Junichi Yamagishi},
journal= {arXiv preprint arXiv:2604.12389},
year = {2026}
}