MMSelfSup supports multiple datasets. Please follow the corresponding guidelines for data preparation. It is recommended to symlink your dataset root to $MMSELFSUP/data
. If your folder structure is different, you may need to change the corresponding paths in config files.
- Prepare ImageNet
- Prepare Place205
- Prepare iNaturalist2018
- Prepare PASCAL VOC
- Prepare CIFAR10
- Prepare datasets for detection and segmentation
mmselfsup
├── mmselfsup
├── tools
├── configs
├── docs
├── data
│ ├── imagenet
│ │ ├── meta
│ │ ├── train
│ │ ├── val
│ ├── places205
│ │ ├── meta
│ │ ├── train
│ │ ├── val
│ ├── inaturalist2018
│ │ ├── meta
│ │ ├── train
│ │ ├── val
│ ├── VOCdevkit
│ │ ├── VOC2007
│ ├── cifar
│ │ ├── cifar-10-batches-py
For ImageNet, it has multiple versions, but the most commonly used one is ILSVRC 2012. It can be accessed with the following steps:
- Register an account and login to the download page
- Find download links for ILSVRC2012 and download the following two files
- ILSVRC2012_img_train.tar (~138GB)
- ILSVRC2012_img_val.tar (~6.3GB)
- Untar the downloaded files
- Download meta data using this script
For Places205, you need to:
- Register an account and login to the download page
- Download the resized images and the image list of train set and validation set of Places205
- Untar the downloaded files
For iNaturalist2018, you need to:
- Download the training and validation images and annotations from the download page
- Untar the downloaded files
- Convert the original json annotation format to the list format using the script
tools/data_converters/convert_inaturalist.py
Assuming that you usually store datasets in $YOUR_DATA_ROOT
. The following command will automatically download PASCAL VOC 2007 into $YOUR_DATA_ROOT
, prepare the required files, create a folder data
under $MMSELFSUP
and make a symlink VOCdevkit
.
bash tools/data_converters/prepare_voc07_cls.sh $YOUR_DATA_ROOT
CIFAR10 will be downloaded automatically if it is not found. In addition, dataset
implemented by MMSelfSup
will also automatically structure CIFAR10 to the appropriate format.
To prepare COCO, VOC2007 and VOC2012 for detection, you can refer to mmdet.
To prepare VOC2012AUG and Cityscapes for segmentation, you can refer to mmseg