CVMay 31

PAI-Studio: Cinematic Video Background Replacement with Camera-Aware Motion

arXiv:2606.0139941.8Has Code
Predicted impact top 4% in CV · last 90 daysOriginality Incremental advance
AI Analysis

For filmmakers and video editors, this addresses the challenge of realistic background replacement with motion coherence and relighting, but the improvement over baselines is not quantified.

PAI-Studio tackles cinematic video background replacement, generating motion-aligned dynamic backgrounds with consistent illumination and foreground relighting. It outperforms existing open-source and commercial solutions, though no concrete numbers are provided.

We present PAI-Studio, a new reference-conditioned video synthesis task that addresses a long-standing challenge in cinematic background replacement: generating dynamic backgrounds aligned with foreground motion while preserving foreground identity, matching reference scene appearance, and achieving globally consistent illumination with realistic foreground relighting. Existing open-source systems and commercial APIs cannot simultaneously ensure motion-consistent background generation, high-fidelity foreground relighting and foreground identity preservation, often resulting in static backgrounds, inconsistent boundaries, and noticeable compositing artifacts. To bridge this gap, we build upon a Diffusion Transformer video backbone and reformulate the problem as an in-context conditional generation task. Through bidirectional attention, our model jointly captures foreground dynamics and background reference information within a unified architecture. We further construct a 30K-scale dataset sourced from high-quality films and online videos to support this task. Extensive evaluations demonstrate that our method significantly outperforms existing open-source and commercial API solutions.

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