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Main Authors: Liu, Yunyi, Akama, Taketo
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.10345
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author Liu, Yunyi
Akama, Taketo
author_facet Liu, Yunyi
Akama, Taketo
contents Pitch shifting has been an essential feature in singing voice production. However, conventional signal processing approaches exhibit well known trade offs such as formant shifts and robotic coloration that becomes more severe at larger transposition jumps. This paper targets high quality pitch shifting for singing by reframing it as a restoration problem: given an audio track that has been pitch shifted (and thus contaminated by artifacts), we recover a natural sounding performance while preserving its melody and timing. Specifically, we use a lightweight, mel space diffusion model driven by frame level acoustic features such as f0, volume, and content features. We construct training pairs in a self supervised manner by applying pitch shifts and reversing them to simulate realistic artifacts while retaining ground truth. On a curated singing set, the proposed approach substantially reduces pitch shift artifacts compared to representative classical baselines, as measured by both statistical metrics and pairwise acoustic measures. The results suggest that restoration based pitch shifting could be a viable approach towards artifact resistant transposition in vocal production workflows.
format Preprint
id arxiv_https___arxiv_org_abs_2601_10345
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Self-supervised restoration of singing voice degraded by pitch shifting using shallow diffusion
Liu, Yunyi
Akama, Taketo
Sound
Pitch shifting has been an essential feature in singing voice production. However, conventional signal processing approaches exhibit well known trade offs such as formant shifts and robotic coloration that becomes more severe at larger transposition jumps. This paper targets high quality pitch shifting for singing by reframing it as a restoration problem: given an audio track that has been pitch shifted (and thus contaminated by artifacts), we recover a natural sounding performance while preserving its melody and timing. Specifically, we use a lightweight, mel space diffusion model driven by frame level acoustic features such as f0, volume, and content features. We construct training pairs in a self supervised manner by applying pitch shifts and reversing them to simulate realistic artifacts while retaining ground truth. On a curated singing set, the proposed approach substantially reduces pitch shift artifacts compared to representative classical baselines, as measured by both statistical metrics and pairwise acoustic measures. The results suggest that restoration based pitch shifting could be a viable approach towards artifact resistant transposition in vocal production workflows.
title Self-supervised restoration of singing voice degraded by pitch shifting using shallow diffusion
topic Sound
url https://arxiv.org/abs/2601.10345