UniStitch: Unifying Semantic and Geometric Features for Image Stitching
arXiv cs.CV / 3/12/2026
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Key Points
- UniStitch proposes a unified image stitching framework that combines semantic and geometric features, bridging the gap between traditional geometry-based methods and learning-based semantic approaches.
- It introduces a Neural Point Transformer (NPT) that converts unordered geometric keypoints into ordered, dense 2D semantic maps, aligning discrete keypoints with continuous feature maps.
- It also introduces an Adaptive Mixture of Experts (AMoE) to fuse geometric and semantic representations, dynamically weighting more reliable features during fusion.
- Experiments show UniStitch achieves significant performance gains over state-of-the-art methods and suggests a unified paradigm for traditional and learning-based image stitching.
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