--- license: cc-by-4.0 tags: - synthetic-data - object-detection - computer-vision - agriculture - apple-detection - benchmark - yolov8 - domain-randomization language: en task_categories: - object-detection pretty_name: ApplesM5 Synthetic Apple Detection Benchmark configs: - config_name: default data_files: - split: train path: "real-original/yolos/images/trains/*.jpg" - split: validation path: "real-original/yolos/images/vals/*.jpg" --- # 🍎 ApplesM5: Synthetic Apple Detection Benchmark This repository hosts the data files (images and annotations) used in the Synetic AI research paper, **"Better Than Real: Synthetic Apple Detection for Orchards."** This dataset was created through procedural content generation and physically-based rendering (PBR) to provide a clean, highly generalized training signal for robust agricultural AI. The data demonstrates that training exclusively on this synthetic dataset yields superior generalization compared to models trained solely on real-world data, achieving up to a **+34.24% increase in mAP50-95**. ## Dataset Structure and Format The dataset is provided in a file-based structure optimized for training YOLO models. | Split | Description | Format | Total File Count | | :--- | :--- | :--- | :--- | | `train/` | Synthetic, procedurally generated images and labels. (Used for training.) | YOLOv8 (1 class) | > 10,000 | | `val/` | Real-world image samples from external orchards. (Used for validation/testing.) | YOLOv8 (1 class) | ~300 | ## Citation Please cite the associated whitepaper when using this dataset in your research: ```bibtex @article{synetic2025applesm5, title={{Better Than Real: Synthetic Apple Detection for Orchards}}, author={Blaga, Octavian and Scott, David and Zand, Ramtin and Seekings, James Blake}, journal={ResearchGate preprint}, year={2025}, doi={10.13140/RG.2.2.29696.49920}, url={https://www.researchgate.net/publication/397341880_Better_Than_Real_Synthetic_Apple_Detection_for_Orchards}, note={Code available at: \url{https://github.com/Syneticai/ApplesM5}} }