VeritaDerm 🩺✨

πŸ“Œ Overview

VeritaDerm is a high-performance computer vision model designed for the automated detection and classification of common dermatological conditions. Trained on a curated dataset of 5,000 images, VeritaDerm leverages the latest YOLO11 architecture to provide a balance between real-time inference speed and clinical accuracy.

This model is intended to assist in research and act as a preliminary screening tool for identifying dermatological patterns in digital imagery.

πŸ“Š Performance Metrics

The model achieved the following results on the validation set after rigorous training on an NVIDIA RTX A6000:

Metric Value
mAP@.5 85.4%
mAP@.5-.95 54.5%
Precision 82.2%
Recall 81.8%
Inference Speed ~4.7ms (on RTX A6000)

VeritaDerm Screenshot

🧬 Supported Classes (8)

The model is trained to identify the following categories:

  1. Acne
  2. Chicken Skin (Keratosis Pilaris)
  3. Eczema
  4. Leprosy
  5. Psoriasis
  6. Ringworm
  7. Warts
  8. Healthy Skin (Background/Control)

πŸš€ How to Use

You can run VeritaDerm directly using the ultralytics library.

1. Install Requirements

pip install ultralytics

2. Run Inference

from ultralytics import YOLO

# Load the model from Hugging Face
model = YOLO("XythicK/veritaderm")

# Predict on an image
results = model.predict(source="path_to_skin_image.jpg", conf=0.25)

# View results
results[0].show()

πŸ› οΈ Training Details

  • Hardware: NVIDIA RTX A6000

  • Dataset Size: 5,000 high-resolution dermatological images.

  • Optimizer: Auto (SGD/AdamW)

  • Epochs: 42 (Optimized)

  • Augmentations: Mosaic, Mixup, and HSV-adjustments used to enhance generalizability.

⚠️ Medical Disclaimer

VeritaDerm is provided for educational and research purposes only. It is NOT a substitute for professional medical advice, diagnosis, or treatment. Always seek the advice of a qualified dermatologist or healthcare provider with any questions you may have regarding a medical condition.

βœ‰οΈ Contact & Citation

If you use this model in your research or project, please credit the author:

@misc{xythick2026veritaderm,
  author = {M Mashhudur Rahim},
  title = {VeritaDerm: A Diagnostic Framework for Multi-Class Skin Disease Detection},
  year = {2026},
  publisher = {Hugging Face},
  howpublished = {\url{https://huggingface.co/XythicK/veritaderm}}
}
Downloads last month
20
Inference Providers NEW
This model isn't deployed by any Inference Provider. πŸ™‹ Ask for provider support

Model tree for arkito/VeritaDerm

Base model

Ultralytics/YOLO11
Finetuned
(122)
this model

Collection including arkito/VeritaDerm

Evaluation results