# Training | |
**Re-implemented training codes in public environments by @JUGGHM** | |
This is an re-implemented and verified version of the original training codes in private environments. Codes for overall framework, dataloaders, and losses are kept. | |
However, we cannot provide the annotations ```json``` currently due to IP issues. | |
You can either integrate our framework into your own codes (Recommanded), or prepare the datasets as following (Needs many efforts). | |
### Config the pretrained checkpoints for ConvNeXt and DINOv2 | |
Download the checkpoints and config the paths in ```data_server_info/pretrained_weight.py``` | |
### Prepare the json files | |
Prepare json files for different datasets in ```data_server_info/public_datasets.py```. Some tiny examples are also provided in ```data_server_info/annos*.json```. | |
### Train | |
```bash mono/scripts/training_scripts/train.sh``` | |