DermaFlux: Synthetic Skin Lesion Generation with Rectified Flows for Enhanced Image Classification
arXiv cs.CV / 3/18/2026
📰 NewsTools & Practical UsageModels & Research
Key Points
- DermaFlux is a rectified flow-based text-to-image framework for generating clinically grounded skin lesion images from dermatology attribute descriptions.
- It builds on Flux.1 and is fine-tuned with LoRA on a curated public clinical dataset, with synthetic captions produced by Llama 3.2 using dermatological criteria such as asymmetry, border irregularity, and color variation.
- The approach improves binary skin lesion classification performance by up to 6% when augmenting small real-world datasets, and up to 9% when comparing against diffusion-based synthetic images.
- An ImageNet-pretrained ViT model trained with 2,500 real images plus 4,375 DermaFlux-generated samples achieves 78.04% accuracy and AUC 0.859, outperforming the next-best dermatology model by about 8%.
Related Articles

Interactive Web Visualization of GPT-2
Reddit r/artificial
[R] Causal self-attention as a probabilistic model over embeddings
Reddit r/MachineLearning
The 5 software development trends that actually matter in 2026 (and what they mean for your startup)
Dev.to

33 LangChain Alternatives That Won't Leak Your Data (2026 Guide)
Dev.to
iPhone 17 Pro Running a 400B LLM: What It Really Means
Dev.to