Skip to content

carat-jhcha/coco-loader

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

7 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

coco-loader

COCO dataset loader. Provides serializable native Python bindings for several COCO dataset formats.

Supported bindings and their corresponding modules:

  • Object Detection: objectdetection
  • Keypoint Detection: keypointdetection
  • Panoptic Segmentation: panopticsegmentation
  • Image Captioning: imagecaptioning

Installation

coco-loader is available on PyPI:

pip install coco-loader

Usage

Creating a dataset (Object Detection)

>>> from coco_loader.common import Info, Image, License
>>> from coco_loader.objectdetection import ObjectDetectionAnnotation, \
...                                      ObjectDetectionCategory, \
...                                      ObjectDetectionDataset
>>> from datetime import datetime
>>> info = Info(  # Describe the dataset
...    year=datetime.now().year,
...    version='1.0',
...    description='This is a test dataset',
...    contributor='Test',
...    url='https://test',
...    date_created=datetime.now()
... )
>>> mit_license = License(  # Set the license
...     id=0,
...     name='MIT',
...     url='https://opensource.org/licenses/MIT'
... )
>>> images = [  # Describe the images
...     Image(
...         id=0,
...         width=640, height=480,
...         file_name='test.jpg',
...         license=mit_license.id,
...         flickr_url='',
...         coco_url='',
...         date_captured=datetime.now()
...     ),
...     ...
... ]
>>> categories = [  # Describe the categories
...     ObjectDetectionCategory(
...         id=0,
...         name='pedestrian',
...         supercategory=''
...     ),
...     ...
... ]
>>> annotations = [  # Describe the annotations
...     ObjectDetectionAnnotation(
...         id=0,
...         image_id=0,
...         category_id=0,
...         segmentation=[],
...         area=800.0,
...         bbox=[300.0, 100.0, 20.0, 40.0],
...         is_crowd=0
...     ),
...     ...
... ]
>>> dataset = ObjectDetectionDataset(  # Create the dataset
...     info=info,
...     images=images,
...     licenses=[mit_license],
...     categories=categories,
...     annotations=annotations
... )
>>> dataset.save('test_dataset.json', indent=2)  # Save the dataset

Loading a dataset

>>> from coco_loader.objectdetection import ObjectDetectionDataset
>>> dataset = ObjectDetectionDataset.load('test_dataset.json')  # Load the dataset

About

No description, website, or topics provided.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published