SDAIASSep 7, 2025

DreamAudio: Customized Text-to-Audio Generation with Diffusion Models

arXiv:2509.06027v12 citationsh-index: 25
Originality Incremental advance
AI Analysis

This addresses the need for users to generate specific sound content in text-to-audio applications, representing an incremental improvement over existing models.

The paper tackles the problem of controlling fine-grained acoustic characteristics in text-to-audio generation by introducing DreamAudio, a framework that uses reference audio samples to generate customized sounds, achieving high consistency with specific audio features and maintaining competitive performance in general tasks.

With the development of large-scale diffusion-based and language-modeling-based generative models, impressive progress has been achieved in text-to-audio generation. Despite producing high-quality outputs, existing text-to-audio models mainly aim to generate semantically aligned sound and fall short on precisely controlling fine-grained acoustic characteristics of specific sounds. As a result, users that need specific sound content may find it challenging to generate the desired audio clips. In this paper, we present DreamAudio for customized text-to-audio generation (CTTA). Specifically, we introduce a new framework that is designed to enable the model to identify auditory information from user-provided reference concepts for audio generation. Given a few reference audio samples containing personalized audio events, our system can generate new audio samples that include these specific events. In addition, two types of datasets are developed for training and testing the customized systems. The experiments show that the proposed model, DreamAudio, generates audio samples that are highly consistent with the customized audio features and aligned well with the input text prompts. Furthermore, DreamAudio offers comparable performance in general text-to-audio tasks. We also provide a human-involved dataset containing audio events from real-world CTTA cases as the benchmark for customized generation tasks.

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