Archon:面向全方位数字人生成的统一多模态模型 / Archon: A Unified Multimodal Model for Holistic Digital Human Generation
1️⃣ 一句话总结
本文提出一个名为Archon的统一多模态模型,它能同时处理文本、音频、动作和视觉等七种模态,通过高效的令牌压缩和逐步推理策略,高质量地生成逼真的数字人说话视频及其他虚拟人物内容。
Digital humans are fundamental to immersive interaction, yet creating a unified model for holistic modalities, including text, audio, motion, and visual content, remains an open challenge. In this paper, we present Archon, a fully pretrained, human-centric unified multimodal model for holistic avatar generation. Archon unifies seven modalities with modality-specific tokenizers, and a native autoregressive unified multimodal model pretrained on synchronized modalities and 72 diverse tasks to model holistic joint distributions. To address the token explosion challenge in high-fidelity talking videos, we introduce a memory-efficient semantic video reparameterization, achieving 4x token reduction while preserving fine-grained dynamics, coupled with a semantic-driven video diffusion decoder. We further propose a "Thinking in Modality" that decomposes ambiguous cross-modal tasks into stepwise thinking in an alternative chain of modality, progressively enhancing fidelity and controllability. Extensive experiments demonstrate that Archon achieves superior or comparable performance across diverse digital human generation tasks, validating the effectiveness of our unified framework. Project page: this https URL.
Archon:面向全方位数字人生成的统一多模态模型 / Archon: A Unified Multimodal Model for Holistic Digital Human Generation
本文提出一个名为Archon的统一多模态模型,它能同时处理文本、音频、动作和视觉等七种模态,通过高效的令牌压缩和逐步推理策略,高质量地生成逼真的数字人说话视频及其他虚拟人物内容。
源自 arXiv: 2605.30311