AI RESEARCH
GenMask: Adapting DiT for Segmentation via Direct Mask
arXiv CS.CV
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ArXi:2603.23906v1 Announce Type: new Recent approaches for segmentation have leveraged pretrained generative models as feature extractors, treating segmentation as a downstream adaptation task via indirect feature retrieval. This implicit use suffers from a fundamental misalignment in representation. It also depends heavily on indirect feature extraction pipelines, which complicate the workflow and limit adaptation. In this paper, we argue that instead of indirect adaptation, segmentation tasks should be trained directly in a generative manner.