--- license: agpl-3.0 datasets: - openfoodfacts/front_image_classification base_model: - Ultralytics/YOLO11 metrics: - accuracy --- # Front image classification model This model classifies Open Food Facts images into two classes: - `front` (ID 0) - `other` (ID 1) Front images are the "default" image of a product, displayed on Open Food Facts product page. A front image is most of the time a photo of the front side of the product packaging. It's useful to be able to detect front images so that we can update the front image with a newer version (when the packaging changes for example). ## Model Details ### Model Description - **Developed by:** Raphaƫl Bournhonesque - **Model type:** Image Classification - **License:** AGPL 3.0 - **Finetuned from model [optional]:** Yolo11n-cls ## Uses This model is intended to be used on Open Food Facts images only (images of food packaged products). ## Training Details ### Training Data v1.0 of the [front_image_classification](https://huggingface.co/datasets/openfoodfacts/front_image_classification) dataset was used to train the model. ### Training Procedure - Epochs: 100 - Image size: 448 - Albumentation augmentation [This script](https://github.com/openfoodfacts/openfoodfacts-ai/blob/dbbec40a3d964124cd7c8d838023be4a10d6c0be/front-image-classification/train.py) was used for training the model. The augmentation pipeline used for prediction: ```python A.Compose( [ A.LongestMaxSize(max_size=max_size, p=1.0), A.PadIfNeeded(min_height=max_size, min_width=max_size, p=1.0), A.Normalize(mean=DEFAULT_MEAN, std=DEFAULT_STD, p=1.0), ToTensorV2(p=1.0), ] ) ``` For optimal performance, it is advised to keep the same preprocessing pipeline during inference. ## Evaluation accuracy: 0.9525 ## Export An ONNX export can be found in `weights/model.onnx`.