AI RESEARCH
T-Gated Adapter: A Lightweight Temporal Adapter for Vision-Language Medical Segmentation
arXiv CS.CV
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ArXi:2604.08167v1 Announce Type: new Medical image segmentation traditionally relies on fully supervised 3D architectures that demand a large amount of dense, voxel-level annotations from clinical experts which is a prohibitively expensive process. Vision Language Models (VLMs) offer a powerful alternative by leveraging broad visual semantic representations learned from billions of images. However, when applied independently to 2D slices of a 3D scan, these models often produce noisy and anatomically implausible segmentations that violate the inherent continuity of anatomical structures.