| from builtins import isinstance |
| import os |
| import glob |
| import json |
| import logging |
| import zipfile |
| import functools |
| import collections |
|
|
| import datasets |
|
|
| logger = logging.getLogger(__name__) |
|
|
| _VERSION = datasets.Version("1.0.0", "") |
|
|
| _URL = "https://cocodataset.org/#home" |
|
|
| |
| _CITATION = """\ |
| @article{DBLP:journals/corr/LinMBHPRDZ14, |
| author = {Tsung{-}Yi Lin and |
| Michael Maire and |
| Serge J. Belongie and |
| Lubomir D. Bourdev and |
| Ross B. Girshick and |
| James Hays and |
| Pietro Perona and |
| Deva Ramanan and |
| Piotr Doll{\'{a}}r and |
| C. Lawrence Zitnick}, |
| title = {Microsoft {COCO:} Common Objects in Context}, |
| journal = {CoRR}, |
| volume = {abs/1405.0312}, |
| year = {2014}, |
| url = {http://arxiv.org/abs/1405.0312}, |
| archivePrefix = {arXiv}, |
| eprint = {1405.0312}, |
| timestamp = {Mon, 13 Aug 2018 16:48:13 +0200}, |
| biburl = {https://dblp.org/rec/bib/journals/corr/LinMBHPRDZ14}, |
| bibsource = {dblp computer science bibliography, https://dblp.org} |
| } |
| """ |
|
|
| |
| _DESCRIPTION = """COCO is a large-scale object detection, segmentation, and |
| captioning dataset. |
| Note: |
| * Some images from the train and validation sets don't have annotations. |
| * Coco 2014 and 2017 uses the same images, but different train/val/test splits |
| * The test split don't have any annotations (only images). |
| * Coco defines 91 classes but the data only uses 80 classes. |
| * Panotptic annotations defines defines 200 classes but only uses 133. |
| """ |
|
|
| |
| _CONFIG_DESCRIPTION = """ |
| This version contains images, bounding boxes and labels for the {year} version. |
| """ |
|
|
| Split = collections.namedtuple( |
| 'Split', ['name', 'images', 'annotations', 'annotation_type'] |
| ) |
|
|
| |
| CAT = [ |
| "none", |
| "person", |
| "bicycle", |
| "car", |
| "motorcycle", |
| "airplane", |
| "bus", |
| "train", |
| "truck", |
| "boat", |
| "traffic light", |
| "fire hydrant", |
| "street sign", |
| "stop sign", |
| "parking meter", |
| "bench", |
| "bird", |
| "cat", |
| "dog", |
| "horse", |
| "sheep", |
| "cow", |
| "elephant", |
| "bear", |
| "zebra", |
| "giraffe", |
| "hat", |
| "backpack", |
| "umbrella", |
| "shoe", |
| "eye glasses", |
| "handbag", |
| "tie", |
| "suitcase", |
| "frisbee", |
| "skis", |
| "snowboard", |
| "sports ball", |
| "kite", |
| "baseball bat", |
| "baseball glove", |
| "skateboard", |
| "surfboard", |
| "tennis racket", |
| "bottle", |
| "plate", |
| "wine glass", |
| "cup", |
| "fork", |
| "knife", |
| "spoon", |
| "bowl", |
| "banana", |
| "apple", |
| "sandwich", |
| "orange", |
| "broccoli", |
| "carrot", |
| "hot dog", |
| "pizza", |
| "donut", |
| "cake", |
| "chair", |
| "couch", |
| "potted plant", |
| "bed", |
| "mirror", |
| "dining table", |
| "window", |
| "desk", |
| "toilet", |
| "door", |
| "tv", |
| "laptop", |
| "mouse", |
| "remote", |
| "keyboard", |
| "cell phone", |
| "microwave", |
| "oven", |
| "toaster", |
| "sink", |
| "refrigerator", |
| "blender", |
| "book", |
| "clock", |
| "vase", |
| "scissors", |
| "teddy bear", |
| "hair drier", |
| "toothbrush", |
| "hair brush", |
| ] |
|
|
| CAT_PANOPTIC = CAT + [ |
| "banner", |
| "blanket", |
| "none1", |
| "bridge", |
| "none2", |
| "none3", |
| "none4", |
| "none5", |
| "cardboard", |
| "none6", |
| "none7", |
| "none8", |
| "none9", |
| "none10", |
| "none11", |
| "counter", |
| "none12", |
| "curtain", |
| "none13", |
| "none14", |
| "door-stuff", |
| "none15", |
| "none16", |
| "none17", |
| "none18", |
| "none19", |
| "floor-wood", |
| "flower", |
| "none20", |
| "none21", |
| "fruit", |
| "none22", |
| "none23", |
| "gravel", |
| "none24", |
| "none25", |
| "house", |
| "none26", |
| "light", |
| "none27", |
| "none28", |
| "mirror-stuff", |
| "none29", |
| "none30", |
| "none31", |
| "none32", |
| "net", |
| "none33", |
| "none34", |
| "pillow", |
| "none35", |
| "none36", |
| "platform", |
| "playingfield", |
| "none37", |
| "railroad", |
| "river", |
| "road", |
| "none38", |
| "roof", |
| "none39", |
| "none40", |
| "sand", |
| "sea", |
| "shelf", |
| "none41", |
| "none42", |
| "snow", |
| "none43", |
| "stairs", |
| "none44", |
| "none45", |
| "none46", |
| "none47", |
| "tent", |
| "none48", |
| "towel", |
| "none49", |
| "none50", |
| "wall-brick", |
| "none51", |
| "none52", |
| "none53", |
| "wall-stone", |
| "wall-tile", |
| "wall-wood", |
| "water-other", |
| "none54", |
| "window-blind", |
| "window-other", |
| "none55", |
| "none56", |
| "tree-merged", |
| "fence-merged", |
| "ceiling-merged", |
| "sky-other-merged", |
| "cabinet-merged", |
| "table-merged", |
| "floor-other-merged", |
| "pavement-merged", |
| "mountain-merged", |
| "grass-merged", |
| "dirt-merged", |
| "paper-merged", |
| "food-other-merged", |
| "building-other-merged", |
| "rock-merged", |
| "wall-other-merged", |
| "rug-merged", |
| ] |
|
|
| SUPER_CAT = [ |
| "none", |
| "person", |
| "vehicle", |
| "outdoor", |
| "animal", |
| "accessory", |
| "sports", |
| "kitchen", |
| "food", |
| "furniture", |
| "electronic", |
| "appliance", |
| "indoor", |
| ] |
|
|
| SUPER_CAT_PANOPTIC = SUPER_CAT + [ |
| "textile", |
| "building", |
| "raw-material", |
| "furniture-stuff", |
| "floor", |
| "plant", |
| "food-stuff", |
| "ground", |
| "structural", |
| "water", |
| "wall", |
| "window", |
| "ceiling", |
| "sky", |
| "solid", |
| ] |
|
|
| CAT2SUPER_CAT = [ |
| "none", |
| "person", |
| "vehicle", |
| "vehicle", |
| "vehicle", |
| "vehicle", |
| "vehicle", |
| "vehicle", |
| "vehicle", |
| "vehicle", |
| "outdoor", |
| "outdoor", |
| "outdoor", |
| "outdoor", |
| "outdoor", |
| "outdoor", |
| "animal", |
| "animal", |
| "animal", |
| "animal", |
| "animal", |
| "animal", |
| "animal", |
| "animal", |
| "animal", |
| "animal", |
| "accessory", |
| "accessory", |
| "accessory", |
| "accessory", |
| "accessory", |
| "accessory", |
| "accessory", |
| "accessory", |
| "sports", |
| "sports", |
| "sports", |
| "sports", |
| "sports", |
| "sports", |
| "sports", |
| "sports", |
| "sports", |
| "sports", |
| "kitchen", |
| "kitchen", |
| "kitchen", |
| "kitchen", |
| "kitchen", |
| "kitchen", |
| "kitchen", |
| "kitchen", |
| "food", |
| "food", |
| "food", |
| "food", |
| "food", |
| "food", |
| "food", |
| "food", |
| "food", |
| "food", |
| "furniture", |
| "furniture", |
| "furniture", |
| "furniture", |
| "furniture", |
| "furniture", |
| "furniture", |
| "furniture", |
| "furniture", |
| "furniture", |
| "electronic", |
| "electronic", |
| "electronic", |
| "electronic", |
| "electronic", |
| "electronic", |
| "appliance", |
| "appliance", |
| "appliance", |
| "appliance", |
| "appliance", |
| "appliance", |
| "indoor", |
| "indoor", |
| "indoor", |
| "indoor", |
| "indoor", |
| "indoor", |
| "indoor", |
| "indoor", |
| "textile", |
| "textile", |
| "none", |
| "building", |
| "none", |
| "none", |
| "none", |
| "none", |
| "raw-material", |
| "none", |
| "none", |
| "none", |
| "none", |
| "none", |
| "none", |
| "furniture-stuff", |
| "none", |
| "textile", |
| "none", |
| "none", |
| "furniture-stuff", |
| "none", |
| "none", |
| "none", |
| "none", |
| "none", |
| "floor", |
| "plant", |
| "none", |
| "none", |
| "food-stuff", |
| "none", |
| "none", |
| "ground", |
| "none", |
| "none", |
| "building", |
| "none", |
| "furniture-stuff", |
| "none", |
| "none", |
| "furniture-stuff", |
| "none", |
| "none", |
| "none", |
| "none", |
| "structural", |
| "none", |
| "none", |
| "textile", |
| "none", |
| "none", |
| "ground", |
| "ground", |
| "none", |
| "ground", |
| "water", |
| "ground", |
| "none", |
| "building", |
| "none", |
| "none", |
| "ground", |
| "water", |
| "furniture-stuff", |
| "none", |
| "none", |
| "ground", |
| "none", |
| "furniture-stuff", |
| "none", |
| "none", |
| "none", |
| "none", |
| "building", |
| "none", |
| "textile", |
| "none", |
| "none", |
| "wall", |
| "none", |
| "none", |
| "none", |
| "wall", |
| "wall", |
| "wall", |
| "water", |
| "none", |
| "window", |
| "window", |
| "none", |
| "none", |
| "plant", |
| "structural", |
| "ceiling", |
| "sky", |
| "furniture-stuff", |
| "furniture-stuff", |
| "floor", |
| "ground", |
| "solid", |
| "plant", |
| "ground", |
| "raw-material", |
| "food-stuff", |
| "building", |
| "solid", |
| "wall", |
| "textile", |
| ] |
|
|
|
|
| class AnnotationType(object): |
| """Enum of the annotation format types. |
| Splits are annotated with different formats. |
| """ |
|
|
| BBOXES = 'bboxes' |
| PANOPTIC = 'panoptic' |
| NONE = 'none' |
|
|
|
|
|
|
| DETECTION_FEATURE = datasets.Features( |
| { |
| "image": datasets.Image(), |
| "image/filename": datasets.Value("string"), |
| "image/id": datasets.Value("int64"), |
| "objects": datasets.Sequence(feature=datasets.Features({ |
| "id": datasets.Value("int64"), |
| "area": datasets.Value("float32"), |
| "bbox": datasets.Sequence( |
| feature=datasets.Value("float32") |
| ), |
| "label": datasets.ClassLabel(names=CAT), |
| "super_cat_label": datasets.ClassLabel(names=SUPER_CAT), |
| "is_crowd": datasets.Value("bool"), |
| })), |
| } |
| ) |
|
|
| PANOPTIC_FEATURE = datasets.Features( |
| { |
| "image": datasets.Image(), |
| "image/filename": datasets.Value("string"), |
| "image/id": datasets.Value("int64"), |
| "panoptic_objects": datasets.Sequence(feature=datasets.Features({ |
| "id": datasets.Value("int64"), |
| "area": datasets.Value("float32"), |
| "bbox": datasets.Sequence( |
| feature=datasets.Value("float32") |
| ), |
| "label": datasets.ClassLabel(names=CAT_PANOPTIC), |
| "super_cat_label": datasets.ClassLabel(names=SUPER_CAT_PANOPTIC), |
| "is_crowd": datasets.Value("bool"), |
| })), |
| "panoptic_image": datasets.Image(), |
| "panoptic_image/filename": datasets.Value("string"), |
| } |
| ) |
| |
| |
|
|
|
|
|
|
| |
| class CocoConfig(datasets.BuilderConfig): |
| """BuilderConfig for CocoConfig.""" |
|
|
| def __init__(self, features, splits=None, has_panoptic=False, skip_empty_annotations=False, **kwargs): |
| super(CocoConfig, self).__init__( |
| **kwargs |
| ) |
| self.features = features |
| self.splits = splits |
| self.has_panoptic = has_panoptic |
| self.skip_empty_annotations = skip_empty_annotations |
|
|
|
|
| |
| class Coco(datasets.GeneratorBasedBuilder): |
| """Base MS Coco dataset.""" |
|
|
| BUILDER_CONFIGS = [ |
| CocoConfig( |
| name='2014', |
| features=DETECTION_FEATURE, |
| description=_CONFIG_DESCRIPTION.format(year=2014), |
| version=_VERSION, |
| splits=[ |
| Split( |
| name=datasets.Split.TRAIN, |
| images='train2014', |
| annotations='annotations_trainval2014', |
| annotation_type=AnnotationType.BBOXES, |
| ), |
| Split( |
| name=datasets.Split.VALIDATION, |
| images='val2014', |
| annotations='annotations_trainval2014', |
| annotation_type=AnnotationType.BBOXES, |
| ), |
| Split( |
| name=datasets.Split.TEST, |
| images='test2014', |
| annotations='image_info_test2014', |
| annotation_type=AnnotationType.NONE, |
| ), |
| |
| Split( |
| name='test2015', |
| images='test2015', |
| annotations='image_info_test2015', |
| annotation_type=AnnotationType.NONE, |
| ), |
| ], |
| ), |
| CocoConfig( |
| name='2017', |
| features=DETECTION_FEATURE, |
| description=_CONFIG_DESCRIPTION.format(year=2017), |
| version=_VERSION, |
| splits=[ |
| Split( |
| name=datasets.Split.TRAIN, |
| images='train2017', |
| annotations='annotations_trainval2017', |
| annotation_type=AnnotationType.BBOXES, |
| ), |
| Split( |
| name=datasets.Split.VALIDATION, |
| images='val2017', |
| annotations='annotations_trainval2017', |
| annotation_type=AnnotationType.BBOXES, |
| ), |
| Split( |
| name=datasets.Split.TEST, |
| images='test2017', |
| annotations='image_info_test2017', |
| annotation_type=AnnotationType.NONE, |
| ), |
| ], |
| ), |
| CocoConfig( |
| name='2017_panoptic', |
| features=PANOPTIC_FEATURE, |
| description=_CONFIG_DESCRIPTION.format(year=2017), |
| version=_VERSION, |
| has_panoptic=True, |
| splits=[ |
| Split( |
| name=datasets.Split.TRAIN, |
| images='train2017', |
| annotations='panoptic_annotations_trainval2017', |
| annotation_type=AnnotationType.PANOPTIC, |
| ), |
| Split( |
| name=datasets.Split.VALIDATION, |
| images='val2017', |
| annotations='panoptic_annotations_trainval2017', |
| annotation_type=AnnotationType.PANOPTIC, |
| ), |
| ], |
| ), |
| CocoConfig( |
| name='2017_skip', |
| features=DETECTION_FEATURE, |
| description=_CONFIG_DESCRIPTION.format(year=2017), |
| version=_VERSION, |
| skip_empty_annotations=True, |
| splits=[ |
| Split( |
| name=datasets.Split.TRAIN, |
| images='train2017', |
| annotations='annotations_trainval2017', |
| annotation_type=AnnotationType.BBOXES, |
| ), |
| Split( |
| name=datasets.Split.VALIDATION, |
| images='val2017', |
| annotations='annotations_trainval2017', |
| annotation_type=AnnotationType.BBOXES, |
| ), |
| Split( |
| name=datasets.Split.TEST, |
| images='test2017', |
| annotations='image_info_test2017', |
| annotation_type=AnnotationType.NONE, |
| ), |
| ], |
| ), |
| CocoConfig( |
| name='2017_panoptic_skip', |
| features=PANOPTIC_FEATURE, |
| description=_CONFIG_DESCRIPTION.format(year=2017), |
| version=_VERSION, |
| has_panoptic=True, |
| skip_empty_annotations=True, |
| splits=[ |
| Split( |
| name=datasets.Split.TRAIN, |
| images='train2017', |
| annotations='panoptic_annotations_trainval2017', |
| annotation_type=AnnotationType.PANOPTIC, |
| ), |
| Split( |
| name=datasets.Split.VALIDATION, |
| images='val2017', |
| annotations='panoptic_annotations_trainval2017', |
| annotation_type=AnnotationType.PANOPTIC, |
| ), |
| ], |
| ), |
| ] |
|
|
| DEFAULT_CONFIG_NAME = "2017" |
|
|
| def _info(self): |
| return datasets.DatasetInfo( |
| description=_DESCRIPTION, |
| features=self.config.features, |
| supervised_keys=None, |
| homepage=_URL, |
| citation=_CITATION, |
| ) |
|
|
| def _split_generators(self, dl_manager: datasets.DownloadManager): |
|
|
| |
| |
| if dl_manager.manual_dir is None: |
| |
| urls = {} |
| for split in self.config.splits: |
| urls['{}_images'.format(split.name)] = 'zips/{}.zip'.format(split.images) |
| urls['{}_annotations'.format(split.name)] = 'annotations/{}.zip'.format( |
| split.annotations |
| ) |
| |
| logging.info("download and extract coco dataset") |
| root_url = 'http://images.cocodataset.org/' |
| extracted_paths = dl_manager.download_and_extract( |
| {key: root_url + url for key, url in urls.items()} |
| ) |
| else: |
| logging.info(f"use manual directory: {dl_manager.manual_dir}") |
| extracted_paths = {} |
| for split in self.config.splits: |
| extracted_paths['{}_images'.format(split.name)] = dl_manager.manual_dir |
| extracted_paths['{}_annotations'.format(split.name)] = dl_manager.manual_dir |
|
|
| splits = [] |
| for split in self.config.splits: |
| image_dir = extracted_paths['{}_images'.format(split.name)] |
| annotations_dir = extracted_paths['{}_annotations'.format(split.name)] |
| if self.config.has_panoptic: |
| if dl_manager.manual_dir is None: |
| logging.info("extract panoptic data") |
| panoptic_image_zip_path = os.path.join( |
| annotations_dir, |
| 'annotations', |
| 'panoptic_{}.zip'.format(split.images), |
| ) |
| panoptic_dir = dl_manager.extract(panoptic_image_zip_path) |
| panoptic_dir = os.path.join( |
| panoptic_dir, 'panoptic_{}'.format(split.images) |
| ) |
| else: |
| logging.info("use extracted data") |
| panoptic_dir = os.path.join(annotations_dir, 'annotations', 'panoptic_{}.zip'.format(split.images)) |
| else: |
| panoptic_dir = None |
| splits.append( |
| datasets.SplitGenerator( |
| name=split.name, |
| gen_kwargs={ |
| 'image_dir': image_dir, |
| 'annotation_dir': annotations_dir, |
| 'split_name': split.images, |
| 'annotation_type': split.annotation_type, |
| 'panoptic_dir': panoptic_dir, |
| } |
| ) |
| ) |
| return splits |
|
|
| def _generate_examples(self, image_dir, annotation_dir, split_name, annotation_type, panoptic_dir): |
| """Generate examples as dicts. |
| Args: |
| image_dir: `str`, directory containing the images |
| annotation_dir: `str`, directory containing annotations |
| split_name: `str`, <split_name><year> (ex: train2014, val2017) |
| annotation_type: `AnnotationType`, the annotation format (NONE, BBOXES, |
| PANOPTIC) |
| panoptic_dir: If annotation_type is PANOPTIC, contains the panoptic image |
| directory |
| Yields: |
| example key and data |
| """ |
|
|
| if annotation_type == AnnotationType.BBOXES: |
| instance_filename = 'instances_{}.json' |
| elif annotation_type == AnnotationType.PANOPTIC: |
| instance_filename = 'panoptic_{}.json' |
| elif annotation_type == AnnotationType.NONE: |
| instance_filename = 'image_info_{}.json' |
|
|
| skip_empty_annotations = self.config.skip_empty_annotations |
| |
| |
| instance_path = os.path.join( |
| annotation_dir, |
| 'annotations', |
| instance_filename.format(split_name), |
| ) |
| coco_annotation = ANNOTATION_CLS[annotation_type](instance_path) |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| images = coco_annotation.images |
|
|
| |
| |
| |
| |
| if self.config.has_panoptic: |
| objects_key = 'panoptic_objects' |
| else: |
| objects_key = 'objects' |
| |
| |
| |
| |
| |
| |
|
|
| |
| annotation_skipped = 0 |
| for image_info in sorted(images, key=lambda x: x['id']): |
| if annotation_type == AnnotationType.BBOXES: |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| instances = coco_annotation.get_annotations(img_id=image_info['id']) |
| elif annotation_type == AnnotationType.PANOPTIC: |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| panoptic_annotation = coco_annotation.get_annotations( |
| img_id=image_info['id'] |
| ) |
| instances = panoptic_annotation['segments_info'] |
| else: |
| instances = [] |
|
|
| if not instances: |
| annotation_skipped += 1 |
| if skip_empty_annotations: |
| continue |
|
|
| def build_bbox(x, y, width, height): |
| |
| |
| return [ |
| x, |
| y, |
| (x + width), |
| (y + height), |
| ] |
| |
|
|
| example = { |
| 'image': os.path.abspath(os.path.join(image_dir, split_name, image_info['file_name'])), |
| 'image/filename': image_info['file_name'], |
| 'image/id': image_info['id'], |
| objects_key: [ |
| { |
| 'id': instance['id'], |
| 'area': instance['area'], |
| 'bbox': build_bbox(*instance['bbox']), |
| 'label': instance['category_id'], |
| 'super_cat_label': SUPER_CAT_PANOPTIC.index(CAT2SUPER_CAT[instance['category_id']]), |
| 'is_crowd': bool(instance['iscrowd']), |
| } |
| for instance in instances |
| ], |
| } |
| if self.config.has_panoptic: |
| panoptic_filename = panoptic_annotation['file_name'] |
| panoptic_image_path = os.path.join(panoptic_dir, panoptic_filename) |
| example['panoptic_image'] = panoptic_image_path |
| example['panoptic_image/filename'] = panoptic_filename |
|
|
| yield image_info['file_name'], example |
|
|
| logging.info( |
| '%d/%d images do not contains any annotations', |
| annotation_skipped, |
| len(images), |
| ) |
|
|
|
|
| class CocoAnnotation(object): |
| """Coco annotation helper class.""" |
|
|
| def __init__(self, annotation_path): |
| with open(annotation_path, "r") as f: |
| data = json.load(f) |
| self._data = data |
|
|
| @property |
| def categories(self): |
| """Return the category dicts, as sorted in the file.""" |
| return self._data['categories'] |
|
|
| @property |
| def images(self): |
| """Return the image dicts, as sorted in the file.""" |
| return self._data['images'] |
|
|
| def get_annotations(self, img_id): |
| """Return all annotations associated with the image id string.""" |
| raise NotImplementedError |
|
|
|
|
| class CocoAnnotationBBoxes(CocoAnnotation): |
| """Coco annotation helper class.""" |
|
|
| def __init__(self, annotation_path): |
| super(CocoAnnotationBBoxes, self).__init__(annotation_path) |
|
|
| img_id2annotations = collections.defaultdict(list) |
| for a in self._data['annotations']: |
| img_id2annotations[a['image_id']].append(a) |
| self._img_id2annotations = { |
| k: list(sorted(v, key=lambda a: a['id'])) |
| for k, v in img_id2annotations.items() |
| } |
|
|
| def get_annotations(self, img_id): |
| """Return all annotations associated with the image id string.""" |
| |
| return self._img_id2annotations.get(img_id, []) |
|
|
|
|
| class CocoAnnotationPanoptic(CocoAnnotation): |
| """Coco annotation helper class.""" |
|
|
| def __init__(self, annotation_path): |
| super(CocoAnnotationPanoptic, self).__init__(annotation_path) |
| self._img_id2annotations = { |
| a['image_id']: a for a in self._data['annotations'] |
| } |
|
|
| def get_annotations(self, img_id): |
| """Return all annotations associated with the image id string.""" |
| return self._img_id2annotations[img_id] |
|
|
|
|
| ANNOTATION_CLS = { |
| AnnotationType.NONE: CocoAnnotation, |
| AnnotationType.BBOXES: CocoAnnotationBBoxes, |
| AnnotationType.PANOPTIC: CocoAnnotationPanoptic, |
| } |
|
|