SDAIAug 19, 2025

DegDiT: Controllable Audio Generation with Dynamic Event Graph Guided Diffusion Transformer

arXiv:2508.13786v11 citationsh-index: 12IEEE Transactions on Audio, Speech, and Language Processing
Originality Highly original
AI Analysis

This addresses the problem of precise audio synthesis for applications requiring user-specified constraints, representing a novel method for a known bottleneck.

The paper tackles controllable text-to-audio generation by proposing DegDiT, a dynamic event graph-guided diffusion transformer framework, which achieves state-of-the-art performance on multiple datasets.

Controllable text-to-audio generation aims to synthesize audio from textual descriptions while satisfying user-specified constraints, including event types, temporal sequences, and onset and offset timestamps. This enables precise control over both the content and temporal structure of the generated audio. Despite recent progress, existing methods still face inherent trade-offs among accurate temporal localization, open-vocabulary scalability, and practical efficiency. To address these challenges, we propose DegDiT, a novel dynamic event graph-guided diffusion transformer framework for open-vocabulary controllable audio generation. DegDiT encodes the events in the description as structured dynamic graphs. The nodes in each graph are designed to represent three aspects: semantic features, temporal attributes, and inter-event connections. A graph transformer is employed to integrate these nodes and produce contextualized event embeddings that serve as guidance for the diffusion model. To ensure high-quality and diverse training data, we introduce a quality-balanced data selection pipeline that combines hierarchical event annotation with multi-criteria quality scoring, resulting in a curated dataset with semantic diversity. Furthermore, we present consensus preference optimization, facilitating audio generation through consensus among multiple reward signals. Extensive experiments on AudioCondition, DESED, and AudioTime datasets demonstrate that DegDiT achieves state-of-the-art performances across a variety of objective and subjective evaluation metrics.

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