OPRO: Orthogonal Panel-Relative Operators for Panel-Aware In-Context Image Generation
Abstract
A parameter-efficient adaptation method for panel-aware in-context image generation uses learnable orthogonal operators on frozen positional encodings to preserve feature geometry and maintain intra-panel synthesis behavior.
We introduce a parameter-efficient adaptation method for panel-aware in-context image generation with pre-trained diffusion transformers. The key idea is to compose learnable, panel-specific orthogonal operators onto the backbone's frozen positional encodings. This design provides two desirable properties: (1) isometry, which preserves the geometry of internal features, and (2) same-panel invariance, which maintains the model's pre-trained intra-panel synthesis behavior. Through controlled experiments, we demonstrate that the effectiveness of our adaptation method is not tied to a specific positional encoding design but generalizes across diverse positional encoding regimes. By enabling effective panel-relative conditioning, the proposed method consistently improves in-context image-based instructional editing pipelines, including state-of-the-art approaches.
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