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Unlocking Constraints: Source-Free Occlusion-Aware Seamless Segmentation

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arxiv 2506.21198 v2 pith:LDU4TPRZ submitted 2025-06-26 cs.CV cs.ROeess.IV

Unlocking Constraints: Source-Free Occlusion-Aware Seamless Segmentation

classification cs.CV cs.ROeess.IV
keywords datalearningocclusion-awaresegmentationsource-freeunlockadaptationconstraints
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Panoramic image processing is essential for omni-context perception, yet faces constraints like distortions, perspective occlusions, and limited annotations. Previous unsupervised domain adaptation methods transfer knowledge from labeled pinhole data to unlabeled panoramic images, but they require access to source pinhole data. To address these, we introduce a more practical task, i.e., Source-Free Occlusion-Aware Seamless Segmentation (SFOASS), and propose its first solution, called UNconstrained Learning Omni-Context Knowledge (UNLOCK). Specifically, UNLOCK includes two key modules: Omni Pseudo-Labeling Learning and Amodal-Driven Context Learning. While adapting without relying on source data or target labels, this framework enhances models to achieve segmentation with 360{\deg} viewpoint coverage and occlusion-aware reasoning. Furthermore, we benchmark the proposed SFOASS task through both real-to-real and synthetic-to-real adaptation settings. Experimental results show that our source-free method achieves performance comparable to source-dependent methods, yielding state-of-the-art scores of 10.9 in mAAP and 11.6 in mAP, along with an absolute improvement of +4.3 in mAPQ over the source-only method. All data and code will be made publicly available at https://github.com/yihong-97/UNLOCK.

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