--- tags: - computer-vision - object-detection - yolo11s - fruits library_name: ultralytics license: cc-by-4.0 datasets: - Johnatanvq/fruitsdata --- # Fruits Detection Models (YOLOv11 + OAK Deployment) This repository provides two versions of a YOLO-based model trained to detect **apples, carrots, and oranges**. The models were trained on the [Fruits Dataset](https://huggingface.co/datasets/johnatanvq/fruits-dataset), which contains **160 annotated images** with variations in **angles, distances, lighting, shadows, quantities, and surfaces**. --- ## Repository Structure fruits-yolo-model/
├── my_model_PC/
│ └── my_model.pt
└── my_model_CAMERA/
├── my_model_openvino_2022.1_6shave.blob
├── my_model-simplified.onnx
├── my_model.bin
├── my_model.xml
└── my_model.json
--- ## Training & Conversion Training: The model was trained with the Fruits Dataset. Conversion: The .pt weights were exported to ONNX and then converted via Luxonis tools into the .blob format for OAK deployment. Source Code: Training scripts and conversion pipeline are documented here: GitHub: [fruit_detection_model](https://github.com/Johnatanvq/fruit_detection_model) ## License This model is released under the CC-BY 4.0 license. You are free to share, use, and adapt the models, including for commercial purposes, as long as you provide proper attribution. ## Attribution If you use these models, please cite them as: *Fruits Detection Models (YOLOv11 + OAK Deployment), by **Johnatan Valencia (johnatanvq)**, trained on the Fruits Dataset, licensed under CC-BY 4.0.* ## Notes The dataset is compact (160 images) but provides strong variation for robust training. my_model.pt is suitable for PyTorch inference and further training. my_model_openvino_2022.1_6shave.blob is optimized for real-time inference on OAK devices. Supporting files (.onnx, .bin, .xml, .json) are included for reproducibility.