metadata
license: cc-by-4.0
tags:
- ocean
- object-detection
- object-localization
- single-class
FathomNet Megalodon Detector
Model Details
- Trained by researchers at the Monterey Bay Aquarium Research Institute (MBARI).
- Ultralytics YOLOv8x
- Object detection model
- Fine-tuned to detect 1 class, called 'object', using all FathomNet localizations
Intended Use
- Post-process video and images collected by marine researchers
- Can be used to build a localized set of training images, when neither training data nor a model exists for the imagery being analyzed
Factors
- Distribution shifts related to sampling platform, camera parameters, illumination, and deployment environment are expected to impact model performance
- Evaluation was performed on an IID subset of available training data as well as out-of-distribution data
Metrics
- Normalized confusion matrix, precision-recall curve, and F1-confidence curve were evaluated at test time
- [email protected] = 0.782
Training and Evaluation Data
- All publicly-available data on FathomNet
Deployment
- Clone this repository
- In an environment with the
ultralytics
Python package installed, run:
yolo predict model=best.pt