AI RESEARCH
Magnification-Invariant Image Classification via Domain Generalization and Stable Sparse Embedding Signatures
arXiv CS.CV
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ArXi:2604.25817v1 Announce Type: new Magnification shift is a major obstacle to robust histopathology classification, because models trained on one imaging scale often generalize poorly to another. Here, we evaluated this problem on the BreaKHis dataset using a strict patient-disjoint leave-one-magnification-out protocol, comparing supervised baseline, baseline augmented with DCGAN-generated patches, and a gradient-reversal domain-general model designed to preserve discriminative information while suppressing magnification-specific variation.