A dataset can be used by
accessing DatasetCatalog
for its data, or MetadataCatalog
for its metadata (class names, etc).
This document explains how to setup the builtin datasets so they can be used by the above APIs.
Use Custom Datasets gives a deeper dive on how to
use DatasetCatalog
and MetadataCatalog
,
and how to add new datasets to them.
FastInst has builtin support for a few datasets.
The datasets are assumed to exist in a directory specified by the environment variable
DETECTRON2_DATASETS
.
Under this directory, detectron2 will look for datasets in the structure described below, if needed.
$DETECTRON2_DATASETS/
ADEChallengeData2016/
coco/
cityscapes/
You can set the location for builtin datasets by export DETECTRON2_DATASETS=/path/to/datasets
.
If left unset, the default is ./datasets
relative to your current working directory.
Expected dataset structure for COCO:
coco/
annotations/
instances_{train,val}2017.json
panoptic_{train,val}2017.json
{train,val}2017/
# image files that are mentioned in the corresponding json
panoptic_{train,val}2017/ # png annotations
panoptic_semseg_{train,val}2017/ # generated by the script mentioned below
Install panopticapi by:
pip install git+https://github.com/cocodataset/panopticapi.git
Then, run python datasets/prepare_coco_semantic_annos_from_panoptic_annos.py
, to extract semantic annotations from
panoptic annotations (only used for evaluation).
Expected dataset structure for cityscapes:
cityscapes/
gtFine/
train/
aachen/
color.png, instanceIds.png, labelIds.png, polygons.json,
labelTrainIds.png
...
val/
test/
# below are generated Cityscapes panoptic annotation
cityscapes_panoptic_train.json
cityscapes_panoptic_train/
cityscapes_panoptic_val.json
cityscapes_panoptic_val/
cityscapes_panoptic_test.json
cityscapes_panoptic_test/
leftImg8bit/
train/
val/
test/
Install cityscapes scripts by:
pip install git+https://github.com/mcordts/cityscapesScripts.git
Note: to create labelTrainIds.png, first prepare the above structure, then run cityscapesescript with:
CITYSCAPES_DATASET=/path/to/abovementioned/cityscapes python cityscapesscripts/preparation/createTrainIdLabelImgs.py
These files are not needed for instance segmentation.
Note: to generate Cityscapes panoptic dataset, run cityscapesescript with:
CITYSCAPES_DATASET=/path/to/abovementioned/cityscapes python cityscapesscripts/preparation/createPanopticImgs.py
These files are not needed for semantic and instance segmentation.
Expected dataset structure for ADE20k:
ADEChallengeData2016/
images/
annotations/
objectInfo150.txt
# download instance annotation
annotations_instance/
# generated by prepare_ade20k_sem_seg.py
annotations_detectron2/
# below are generated by prepare_ade20k_pan_seg.py
ade20k_panoptic_{train,val}.json
ade20k_panoptic_{train,val}/
# below are generated by prepare_ade20k_ins_seg.py
ade20k_instance_{train,val}.json
The directory annotations_detectron2
is generated by running python datasets/prepare_ade20k_sem_seg.py
.
Install panopticapi by:
pip install git+https://github.com/cocodataset/panopticapi.git
Download the instance annotation from http://sceneparsing.csail.mit.edu/:
wget http://sceneparsing.csail.mit.edu/data/ChallengeData2017/annotations_instance.tar
Then, run python datasets/prepare_ade20k_pan_seg.py
, to combine semantic and instance annotations for panoptic
annotations.
And run python datasets/prepare_ade20k_ins_seg.py
, to extract instance annotations in COCO format.