Low-Bitrate Video Compression through Semantic-Conditioned Diffusion
Wang, Lingdong, Su, Guan-Ming, Kothandaraman, Divya, Huang, Tsung-Wei, Hajiesmaili, Mohammad, Sitaraman, Ramesh K.
–arXiv.org Artificial Intelligence
Traditional video codecs optimized for pixel fidelity collapse at ultra-low bitrates and produce severe artifacts. This failure arises from a fundamental misalignment between pixel accuracy and human perception. We propose a semantic video compression framework named DiSCo that transmits only the most meaningful information while relying on generative priors for detail synthesis. The source video is decomposed into three compact modalities: a textual description, a spatiotemporally degraded video, and optional sketches or poses that respectively capture semantic, appearance, and motion cues. A conditional video diffusion model then reconstructs high-quality, temporally coherent videos from these compact representations. Temporal forward filling, token interleaving, and modality-specific codecs are proposed to improve multimodal generation and modality compactness. Experiments show that our method outperforms baseline semantic and traditional codecs by 2-10X on perceptual metrics at low bitrates.
arXiv.org Artificial Intelligence
Dec-2-2025
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