AI RESEARCH
Tri-path DINO: Feature Complementary Learning for Remote Sensing Multi-Class Change Detection
arXiv CS.CV
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ArXi:2603.01498v2 Announce Type: replace In remote sensing imagery, multi class change detection (MCD) is crucial for fine grained monitoring, yet it has long been constrained by complex scene variations and the scarcity of detailed annotations. To address this, we propose the Tripath DINO architecture, which adopts a three path complementary feature learning strategy to facilitate the rapid adaptation of pre trained foundation models to complex vertical domains. Specifically, we employ the DINOv3 pre trained model as the backbone feature extraction network to learn coarse grained features.