Enhancing In-context Panoramic Generation via Geometric-aware Pretraining
In this work, we present Canvas360, a two-stage framework for in-context panoramic generation that combines geometry-aware pretraining with downstream task-specific fine-tuning. To address the lack of large-scale, high-quality training data tailored to in-context panoramic tasks, we propose Canvas360Dataset, a collection of 1M high-quality paired panoramic samples for style transfer, inpainting, outpainting, and editing, enabling effective supervision across diverse in-context generation scenarios. On the modeling side, Canvas360 enhances text-to-panorama generation through parallel depth gene
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Why these links exist
- Linked via arxiv authorHaoran Feng →
Enhancing In-context Panoramic Generation via Geometric-aware Pretraining
- Linked via arxiv authorRuiyang Zhang →
Enhancing In-context Panoramic Generation via Geometric-aware Pretraining
- Linked via arxiv authorLongyi Zhang →
Enhancing In-context Panoramic Generation via Geometric-aware Pretraining
- Linked via arxiv authorDizhe Zhang →
Enhancing In-context Panoramic Generation via Geometric-aware Pretraining
- Linked via arxiv authorLu Qi →
Enhancing In-context Panoramic Generation via Geometric-aware Pretraining
