The study addresses the challenge of multi-task dense prediction with partially annotated data. It focuses on capturing cross-task relationships by leveraging Segment Anything Model (SAM) for local alignment challenges. The proposed method models region-wise representations using Gaussian Distributions, enhancing the ability to capture intra-region structures and improve overall performance in multi-task scenarios. Extensive experiments showcase the effectiveness of the approach even compared to fully supervised methods.
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