# MMYOLO Model Assigner Visualization ## Introduction This project is developed for easily showing assigning results. The script allows users to analyze where and how many positive samples each gt is assigned in the image. Now, the script supports `YOLOv5`, `YOLOv7`, `YOLOv8` and `RTMDet`. ## Usage ### Command YOLOv5 assigner visualization command: ```shell python projects/assigner_visualization/assigner_visualization.py projects/assigner_visualization/configs/yolov5_s-v61_syncbn_fast_8xb16-300e_coco_assignervisualization.py ``` Note: `YOLOv5` does not need to load the trained weights. YOLOv7 assigner visualization command: ```shell python projects/assigner_visualization/assigner_visualization.py projects/assigner_visualization/configs/yolov7_tiny_syncbn_fast_8xb16-300e_coco_assignervisualization.py -c ${checkpont} ``` YOLOv8 assigner visualization command: ```shell python projects/assigner_visualization/assigner_visualization.py projects/assigner_visualization/configs/yolov8_s_syncbn_fast_8xb16-500e_coco_assignervisualization.py -c ${checkpont} ``` RTMdet assigner visualization command: ```shell python projects/assigner_visualization/assigner_visualization.py projects/assigner_visualization/configs/rtmdet_s_syncbn_fast_8xb32-300e_coco_assignervisualization.py -c ${checkpont} ``` ${checkpont} is the checkpont file path. Dynamic label assignment is used in `YOLOv7`, `YOLOv8` and `RTMDet`, model weights will affect the positive sample allocation results, so it is recommended to load the trained model weights. If you want to know details about label assignment, you can check the [RTMDet](https://mmyolo.readthedocs.io/zh_CN/latest/algorithm_descriptions/rtmdet_description.html#id5).