CVAIMMApr 29, 2025

AlignDiT: Multimodal Aligned Diffusion Transformer for Synchronized Speech Generation

arXiv:2504.20629v25 citationsh-index: 9MM
Originality Highly original
AI Analysis

This work addresses multimodal-to-speech generation for applications like film production and virtual avatars, presenting a novel method with strong performance gains.

The paper tackles the problem of generating high-quality speech from multiple input modalities (text, video, and reference audio), addressing limitations in intelligibility, synchronization, naturalness, and voice similarity, and demonstrates that AlignDiT significantly outperforms existing methods across benchmarks.

In this paper, we address the task of multimodal-to-speech generation, which aims to synthesize high-quality speech from multiple input modalities: text, video, and reference audio. This task has gained increasing attention due to its wide range of applications, such as film production, dubbing, and virtual avatars. Despite recent progress, existing methods still suffer from limitations in speech intelligibility, audio-video synchronization, speech naturalness, and voice similarity to the reference speaker. To address these challenges, we propose AlignDiT, a multimodal Aligned Diffusion Transformer that generates accurate, synchronized, and natural-sounding speech from aligned multimodal inputs. Built upon the in-context learning capability of the DiT architecture, AlignDiT explores three effective strategies to align multimodal representations. Furthermore, we introduce a novel multimodal classifier-free guidance mechanism that allows the model to adaptively balance information from each modality during speech synthesis. Extensive experiments demonstrate that AlignDiT significantly outperforms existing methods across multiple benchmarks in terms of quality, synchronization, and speaker similarity. Moreover, AlignDiT exhibits strong generalization capability across various multimodal tasks, such as video-to-speech synthesis and visual forced alignment, consistently achieving state-of-the-art performance. The demo page is available at https://mm.kaist.ac.kr/projects/AlignDiT.

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