AI RESEARCH

Resolution scaling governs DINOv3 transfer performance in chest radiograph classification

arXiv CS.LG

ArXi:2510.07191v3 Announce Type: replace-cross Self-supervised learning (SSL) has improved visual representation learning, but its value in chest radiography remains uncertain. DINOv3 extends earlier SSL models through Gram-anchored self-distillation and explicit high-resolution adaptation. Whether these changes improve transfer learning for chest radiograph classification has not been established. We benchmarked DINOv3 against DINOv2 and supervised ImageNet initialization across seven chest radiograph datasets comprising 816,183 radiographs from pediatric and adult cohorts.