--- task_categories: - feature-extraction - image-classification tags: - biology pretty_name: cardomomqv-880 size_categories: - n<1K --- # 📦 Cardamom Quality Grading with Computer Vision (YOLOv8) This Hugging Face model is trained on our **Cardamom Quality Grading** dataset, designed to automatically assess the quality of cardamom spice using computer vision techniques. --- ## 🎯 Model Purpose The model performs **quality grading** on cardamom, classifying it into defined categories using YOLOv8. It's ideal for researchers and practitioners in: - Agricultural automation - Food quality control - Computer vision in agritech --- ## 📖 Dataset & Reference This work is based on the research paper: **Computer Vision Technique for Quality Grading of Cardamom Spice** Ahamed Ahnaf, Mohamed Rafeek, A. R. M. Nizzad, Nazaar Fathima Mafaza *2025 International Research Conference on Smart Computing and Systems Engineering (SCSE)* DOI: [10.1109/SCSE65633.2025.11031046](https://doi.org/10.1109/SCSE65633.2025.11031046) --- ## 📌 To Use the Model ```python from transformers import VisionModel model = VisionModel.from_pretrained("nizzad/CardamomQV-880") results = model.predict(image="cardamom_sample.jpg") print(results) ``` --- ## 📌 Citation If you use this model or dataset in your work, please cite our publication: ```bibtex @INPROCEEDINGS{11031046, author={Ahamed Ahnaf and Mohamed Rafeek and A. R. M. Nizzad and Nazaar Fathima Mafaza}, booktitle={2025 International Research Conference on Smart Computing and Systems Engineering (SCSE)}, title={Computer Vision Technique for Quality Grading of Cardamom Spice}, year={2025}, pages={1-6}, doi={10.1109/SCSE65633.2025.11031046} } ``` ---