Vision Transformer optimized on Herlev dataset reaches 94.9-95.2% accuracy in cervical cell classification with Grad-CAM attention aligning to nuclear and chromatin features.
Hybrid Loss-Constrained Lightweight Convolutional Neural Networks for Cervical Cell Classification,
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Systematic Evaluation of Vision Transformers for Automated Cervical Cancer Classification: Optimization, Statistical Validation, and Clinical Interpretability
Vision Transformer optimized on Herlev dataset reaches 94.9-95.2% accuracy in cervical cell classification with Grad-CAM attention aligning to nuclear and chromatin features.