# Dummy ResNet Wrapper This is an example README for community `projects/`. We have provided detailed explanations for each field in the form of html comments, which are visible when you read the source of this README file. If you wish to submit your project to our main repository, then all the fields in this README are mandatory for others to understand what you have achieved in this implementation. For more details, read our [contribution guide](https://mmdetection.readthedocs.io/en/main/notes/contribution_guide.html) or approach us in [Discussions](https://github.com/open-mmlab/mmdetection/discussions). ## Description This project implements a dummy ResNet wrapper, which literally does nothing new but prints "hello world" during initialization. ## Usage ### Training commands In MMDetection's root directory, run the following command to train the model: ```bash python tools/train.py projects/example_project/configs/faster-rcnn_dummy-resnet_fpn_1x_coco.py ``` For multi-gpu training, run: ```bash python -m torch.distributed.launch --nnodes=1 --node_rank=0 --nproc_per_node=${NUM_GPUS} --master_port=29506 --master_addr="127.0.0.1" tools/train.py projects/example_project/configs/faster-rcnn_dummy-resnet_fpn_1x_coco.py ``` ### Testing commands In MMDetection's root directory, run the following command to test the model: ```bash python tools/test.py projects/example_project/configs/faster-rcnn_dummy-resnet_fpn_1x_coco.py ${CHECKPOINT_PATH} ``` ## Results | Method | Backbone | Pretrained Model | Training set | Test set | #epoch | box AP | Download | | :-------------------------------------------------------------------: | :---------: | :--------------: | :------------: | :----------: | :----: | :----: | :----------------------: | | [Faster R-CNN dummy](configs/faster-rcnn_dummy-resnet_fpn_1x_coco.py) | DummyResNet | - | COCO2017 Train | COCO2017 Val | 12 | 0.8853 | [model](<>) \| [log](<>) | ## Citation ```latex @article{Ren_2017, title={Faster R-CNN: Towards Real-Time Object Detection with Region Proposal Networks}, journal={IEEE Transactions on Pattern Analysis and Machine Intelligence}, publisher={Institute of Electrical and Electronics Engineers (IEEE)}, author={Ren, Shaoqing and He, Kaiming and Girshick, Ross and Sun, Jian}, year={2017}, month={Jun}, } ``` ## Checklist - [ ] Milestone 1: PR-ready, and acceptable to be one of the `projects/`. - [ ] Finish the code - [ ] Basic docstrings & proper citation - [ ] Test-time correctness - [ ] A full README - [ ] Milestone 2: Indicates a successful model implementation. - [ ] Training-time correctness - [ ] Milestone 3: Good to be a part of our core package! - [ ] Type hints and docstrings - [ ] Unit tests - [ ] Code polishing - [ ] Metafile.yml - [ ] Move your modules into the core package following the codebase's file hierarchy structure. - [ ] Refactor your modules into the core package following the codebase's file hierarchy structure.