Skip to content

Deep learning model constructed using the same idea of yolo but for Risiko! object detection

License

Notifications You must be signed in to change notification settings

Sproc01/BranchyYOLO

Repository files navigation

BranchyYOLO

A Deep Learning model built using the same idea as YOLO, but with a 2-branch topology. This is its PyTorch implementation for Risiko! table game's pieces object detection.

In this repository there is also an ablated version of YOLOv9-C which has been studied during the development of BranchyYOLO.

For more information read the report.

Requirements

  • PyTorch
  • YOLOv9-C official implementation: git clone 'https://github.com/WongKinYiu/yolov9.git' After downloading it run the following commands:
    • sed -i 's/opt.min_items/min_items/' yolov9/val.py
    • sed -i 's/opt.min_items/min_items/' yolov9/val_dual.py
  • Install the yolov9 requirements: pip install -r yolov9/requirements.txt

Files explanation

We don't include our training dataset because it is too big

  • The file run.py contains the code to train the model and also to test it

    Important: modify run.py imports according to the model being trained: use *_dual files if and only if the ablated model is going to be used (since it has the DualDetect block instead of the Detect block at the end).

  • The file BranchyYOLO.yaml contains the definition of BranchyYOLO model; it will be imported by models.yolo.parse_model
  • The file AblatedYOLOv9-C.yaml contains the definition of the ablated version of YOLOv9-C
  • The file hyp.yaml contains the definition of some hyperparameters used during the training phase
  • The file coco.yaml contains the definition of the dataset used for training, validation and testing
  • The file Detection.ipynb can be used to perform object detection in images

About

Deep learning model constructed using the same idea of yolo but for Risiko! object detection

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published