research articlejournal article
Adapting Vision Transformers to Ultra-High Resolution Semantic Segmentation with Relay Tokens
Abstract
International audienceCurrent approaches for segmenting ultra high resolution images either slide a window, thereby discarding global context, or downsample and lose fine detail. We propose a simple yet effective method that brings explicit multi scale reasoning to vision transformers, simultaneously preserving local details and global awareness. Concretely, we process each image in parallel at a local scale (high resolution, small crops) and a global scale (low resolution, large crops), and aggregate and propagate features between the two branches with a small set of learnable relay tokens. The design plugs directly into standard transformer backbones (eg ViT and Swin) and adds fewer than 2 % parameters. Extensive experiments on three ultra high resolution segmentation benchmarks, Archaeoscape, URUR, and Gleason, and on the conventional Cityscapes dataset show consistent gains, with up to 15 % relative mIoU improvement. Code and pretrained models are available at https://archaeoscape.ai/work/relay-tokens/- info:eu-repo/semantics/article
- Journal articles
- Histopathology
- Remote Sensing
- Satellite image analysis
- Archaeology
- LiDAR
- Transformers
- Semantic Segmentation
- FOS: Computer and information sciences
- Computer Vision and Pattern Recognition (cs.CV)
- [INFO.INFO-CV]Computer Science [cs]/Computer Vision and Pattern Recognition [cs.CV]