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SE360: Semantic Edit in 360$^\circ$ Panoramas via Hierarchical Data Construction

About

While instruction-based image editing is emerging, extending it to 360$^\circ$ panoramas introduces additional challenges. Existing methods often produce implausible results in both equirectangular projections (ERP) and perspective views. To address these limitations, we propose SE360, a novel framework for multi-condition guided object editing in 360$^\circ$ panoramas. At its core is a novel coarse-to-fine autonomous data generation pipeline without manual intervention. This pipeline leverages a Vision-Language Model (VLM) and adaptive projection adjustment for hierarchical analysis, ensuring the holistic segmentation of objects and their physical context. The resulting data pairs are both semantically meaningful and geometrically consistent, even when sourced from unlabeled panoramas. Furthermore, we introduce a cost-effective, two-stage data refinement strategy to improve data realism and mitigate model overfitting to erase artifacts. Based on the constructed dataset, we train a Transformer-based diffusion model to allow flexible object editing guided by text, mask, or reference image in 360$^\circ$ panoramas. Our experiments demonstrate that our method outperforms existing methods in both visual quality and semantic accuracy.

Haoyi Zhong, Fang-Lue Zhang, Andrew Chalmers, Taehyun Rhee• 2025

Related benchmarks

TaskDatasetResultRank
Object AdditionSE360 1.0 (test)
CSpers29.354
9
Panoramic Image EditingSE360
FID62.47
9
Panoramic EditingStructured3D + SUN360 (test)
FID64.1
9
Object RemovalSE360 360° panorama (test)
CS-Nopers73.143
6
Object Addition360-degree Panorama User Study Set 30 samples 1.0 (test)
Consistency4.47
5
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