Saved in:
Bibliographic Details
Main Authors: Ma, Hao, Peng, Zhiyuan, Li, Xu, Li, Yukai, Shao, Mingjie, Kong, Qiuqiang, Liu, Ju
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.09398
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866916658547785728
author Ma, Hao
Peng, Zhiyuan
Li, Xu
Li, Yukai
Shao, Mingjie
Kong, Qiuqiang
Liu, Ju
author_facet Ma, Hao
Peng, Zhiyuan
Li, Xu
Li, Yukai
Shao, Mingjie
Kong, Qiuqiang
Liu, Ju
contents Language-queried target sound extraction (TSE) aims to extract specific sounds from mixtures based on language queries. Traditional fully-supervised training schemes require extensively annotated parallel audio-text data, which are labor-intensive. We introduce a parallel-data-free training scheme, requiring only unlabelled audio clips for TSE model training by utilizing the contrastive language-audio pre-trained model (CLAP). In a vanilla parallel-data-free training stage, target audio is encoded using the pre-trained CLAP audio encoder to form a condition embedding, while during testing, user language queries are encoded by CLAP text encoder as the condition embedding. This vanilla approach assumes perfect alignment between text and audio embeddings, which is unrealistic. Two major challenges arise from training-testing mismatch: the persistent modality gap between text and audio and the risk of overfitting due to the exposure of rich acoustic details in target audio embedding during training. To address this, we propose a retrieval-augmented strategy. Specifically, we create an embedding cache using audio captions generated by a large language model (LLM). During training, target audio embeddings retrieve text embeddings from this cache to use as condition embeddings, ensuring consistent modalities between training and testing and eliminating information leakage. Extensive experiment results show that our retrieval-augmented approach achieves consistent and notable performance improvements over existing state-of-the-art with better generalizability.
format Preprint
id arxiv_https___arxiv_org_abs_2409_09398
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Language-Queried Target Sound Extraction Without Parallel Training Data
Ma, Hao
Peng, Zhiyuan
Li, Xu
Li, Yukai
Shao, Mingjie
Kong, Qiuqiang
Liu, Ju
Audio and Speech Processing
Sound
Language-queried target sound extraction (TSE) aims to extract specific sounds from mixtures based on language queries. Traditional fully-supervised training schemes require extensively annotated parallel audio-text data, which are labor-intensive. We introduce a parallel-data-free training scheme, requiring only unlabelled audio clips for TSE model training by utilizing the contrastive language-audio pre-trained model (CLAP). In a vanilla parallel-data-free training stage, target audio is encoded using the pre-trained CLAP audio encoder to form a condition embedding, while during testing, user language queries are encoded by CLAP text encoder as the condition embedding. This vanilla approach assumes perfect alignment between text and audio embeddings, which is unrealistic. Two major challenges arise from training-testing mismatch: the persistent modality gap between text and audio and the risk of overfitting due to the exposure of rich acoustic details in target audio embedding during training. To address this, we propose a retrieval-augmented strategy. Specifically, we create an embedding cache using audio captions generated by a large language model (LLM). During training, target audio embeddings retrieve text embeddings from this cache to use as condition embeddings, ensuring consistent modalities between training and testing and eliminating information leakage. Extensive experiment results show that our retrieval-augmented approach achieves consistent and notable performance improvements over existing state-of-the-art with better generalizability.
title Language-Queried Target Sound Extraction Without Parallel Training Data
topic Audio and Speech Processing
Sound
url https://arxiv.org/abs/2409.09398