LASA aggregates multi-layer attention from vision transformers to enable weakly supervised open-vocabulary semantic segmentation on scene sketches, reporting mIoU gains of +3.43 to +15.74 on three benchmarks over prior baselines.
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LASA: A Weak Supervision Method for Open-Vocabulary Scene Sketch Semantic Segmentation
LASA aggregates multi-layer attention from vision transformers to enable weakly supervised open-vocabulary semantic segmentation on scene sketches, reporting mIoU gains of +3.43 to +15.74 on three benchmarks over prior baselines.