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Autores principales: Liang, Jinhua, Chen, Yuanzhe, Yuan, Yi, Jia, Dongya, Zhuang, Xiaobin, Chen, Zhuo, Wang, Yuping, Wang, Yuxuan
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2505.16076
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author Liang, Jinhua
Chen, Yuanzhe
Yuan, Yi
Jia, Dongya
Zhuang, Xiaobin
Chen, Zhuo
Wang, Yuping
Wang, Yuxuan
author_facet Liang, Jinhua
Chen, Yuanzhe
Yuan, Yi
Jia, Dongya
Zhuang, Xiaobin
Chen, Zhuo
Wang, Yuping
Wang, Yuxuan
contents Editing sound with precision is a crucial yet underexplored challenge in audio content creation. While existing works can manipulate sounds by text instructions or audio exemplar pairs, they often struggled to modify audio content precisely while preserving fidelity to the original recording. In this work, we introduce a novel editing approach that enables localized modifications to specific time-frequency regions while keeping the remaining of the audio intact by operating on spectrograms directly. To achieve this, we propose AudioMorphix, a training-free audio editor that manipulates a target region on the spectrogram by referring to another recording. Inspired by morphing theory, we conceptualize audio mixing as a process where different sounds blend seamlessly through morphing and can be decomposed back into individual components via demorphing. Our AudioMorphix optimizes the noised latent conditioned on raw input and reference audio while rectifying the guided diffusion process through a series of energy functions. Additionally, we enhance self-attention layers with a cache mechanism to preserve detailed characteristics from the original recordings. To advance audio editing research, we devise a new evaluation benchmark, which includes a curated dataset with a variety of editing instructions. Extensive experiments demonstrate that AudioMorphix yields promising performance on various audio editing tasks, including addition, removal, time shifting and stretching, and pitch shifting, achieving high fidelity and precision. Demo and code are available at this url.
format Preprint
id arxiv_https___arxiv_org_abs_2505_16076
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle AudioMorphix: Training-free audio editing with diffusion probabilistic models
Liang, Jinhua
Chen, Yuanzhe
Yuan, Yi
Jia, Dongya
Zhuang, Xiaobin
Chen, Zhuo
Wang, Yuping
Wang, Yuxuan
Audio and Speech Processing
Editing sound with precision is a crucial yet underexplored challenge in audio content creation. While existing works can manipulate sounds by text instructions or audio exemplar pairs, they often struggled to modify audio content precisely while preserving fidelity to the original recording. In this work, we introduce a novel editing approach that enables localized modifications to specific time-frequency regions while keeping the remaining of the audio intact by operating on spectrograms directly. To achieve this, we propose AudioMorphix, a training-free audio editor that manipulates a target region on the spectrogram by referring to another recording. Inspired by morphing theory, we conceptualize audio mixing as a process where different sounds blend seamlessly through morphing and can be decomposed back into individual components via demorphing. Our AudioMorphix optimizes the noised latent conditioned on raw input and reference audio while rectifying the guided diffusion process through a series of energy functions. Additionally, we enhance self-attention layers with a cache mechanism to preserve detailed characteristics from the original recordings. To advance audio editing research, we devise a new evaluation benchmark, which includes a curated dataset with a variety of editing instructions. Extensive experiments demonstrate that AudioMorphix yields promising performance on various audio editing tasks, including addition, removal, time shifting and stretching, and pitch shifting, achieving high fidelity and precision. Demo and code are available at this url.
title AudioMorphix: Training-free audio editing with diffusion probabilistic models
topic Audio and Speech Processing
url https://arxiv.org/abs/2505.16076