VeritaDerm π©Ίβ¨
π 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.
π 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) |
𧬠Supported Classes (8)
The model is trained to identify the following categories:
- Acne
- Chicken Skin (Keratosis Pilaris)
- Eczema
- Leprosy
- Psoriasis
- Ringworm
- Warts
- Healthy Skin (Background/Control)
π 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()
π 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.
β οΈ 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.
βοΈ 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}}
}
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Base model
Ultralytics/YOLO11Collection including arkito/VeritaDerm
Evaluation results
- mAP@0.5self-reported84.500
- mAP@0.5:0.95self-reported54.500
- recallself-reported81.800
- precisionself-reported83.200
