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"""
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This file registers pre-defined datasets at hard-coded paths, and their metadata.
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We hard-code metadata for common datasets. This will enable:
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1. Consistency check when loading the datasets
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2. Use models on these standard datasets directly and run demos,
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without having to download the dataset annotations
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We hard-code some paths to the dataset that's assumed to
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exist in "./datasets/".
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Users SHOULD NOT use this file to create new dataset / metadata for new dataset.
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To add new dataset, refer to the tutorial "docs/DATASETS.md".
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"""
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import os
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from detectron2.data import DatasetCatalog, MetadataCatalog
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from .builtin_meta import ADE20K_SEM_SEG_CATEGORIES, _get_builtin_metadata
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from .cityscapes import load_cityscapes_instances, load_cityscapes_semantic
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from .cityscapes_panoptic import register_all_cityscapes_panoptic
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from .coco import load_sem_seg, register_coco_instances
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from .coco_panoptic import register_coco_panoptic, register_coco_panoptic_separated
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from .lvis import get_lvis_instances_meta, register_lvis_instances
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from .pascal_voc import register_pascal_voc
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_PREDEFINED_SPLITS_COCO = {}
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_PREDEFINED_SPLITS_COCO["coco"] = {
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"coco_2014_train": ("coco/train2014", "coco/annotations/instances_train2014.json"),
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"coco_2014_val": ("coco/val2014", "coco/annotations/instances_val2014.json"),
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"coco_2014_minival": ("coco/val2014", "coco/annotations/instances_minival2014.json"),
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"coco_2014_valminusminival": (
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"coco/val2014",
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"coco/annotations/instances_valminusminival2014.json",
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),
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"coco_2017_train": ("coco/train2017", "coco/annotations/instances_train2017.json"),
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"coco_2017_val": ("coco/val2017", "coco/annotations/instances_val2017.json"),
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"coco_2017_test": ("coco/test2017", "coco/annotations/image_info_test2017.json"),
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"coco_2017_test-dev": ("coco/test2017", "coco/annotations/image_info_test-dev2017.json"),
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"coco_2017_val_100": ("coco/val2017", "coco/annotations/instances_val2017_100.json"),
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}
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_PREDEFINED_SPLITS_COCO["coco_person"] = {
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"keypoints_coco_2014_train": (
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"coco/train2014",
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"coco/annotations/person_keypoints_train2014.json",
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),
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"keypoints_coco_2014_val": ("coco/val2014", "coco/annotations/person_keypoints_val2014.json"),
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"keypoints_coco_2014_minival": (
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"coco/val2014",
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"coco/annotations/person_keypoints_minival2014.json",
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),
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"keypoints_coco_2014_valminusminival": (
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"coco/val2014",
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"coco/annotations/person_keypoints_valminusminival2014.json",
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),
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"keypoints_coco_2017_train": (
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"coco/train2017",
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"coco/annotations/person_keypoints_train2017.json",
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),
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"keypoints_coco_2017_val": ("coco/val2017", "coco/annotations/person_keypoints_val2017.json"),
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"keypoints_coco_2017_val_100": (
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"coco/val2017",
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"coco/annotations/person_keypoints_val2017_100.json",
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),
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}
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_PREDEFINED_SPLITS_COCO_PANOPTIC = {
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"coco_2017_train_panoptic": (
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"coco/panoptic_train2017",
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"coco/annotations/panoptic_train2017.json",
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"coco/panoptic_stuff_train2017",
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),
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"coco_2017_val_panoptic": (
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"coco/panoptic_val2017",
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"coco/annotations/panoptic_val2017.json",
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"coco/panoptic_stuff_val2017",
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),
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"coco_2017_val_100_panoptic": (
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"coco/panoptic_val2017_100",
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"coco/annotations/panoptic_val2017_100.json",
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"coco/panoptic_stuff_val2017_100",
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),
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}
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def register_all_coco(root):
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for dataset_name, splits_per_dataset in _PREDEFINED_SPLITS_COCO.items():
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for key, (image_root, json_file) in splits_per_dataset.items():
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register_coco_instances(
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key,
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_get_builtin_metadata(dataset_name),
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os.path.join(root, json_file) if "://" not in json_file else json_file,
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os.path.join(root, image_root),
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)
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for (
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prefix,
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(panoptic_root, panoptic_json, semantic_root),
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) in _PREDEFINED_SPLITS_COCO_PANOPTIC.items():
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prefix_instances = prefix[: -len("_panoptic")]
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instances_meta = MetadataCatalog.get(prefix_instances)
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image_root, instances_json = instances_meta.image_root, instances_meta.json_file
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register_coco_panoptic_separated(
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prefix,
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_get_builtin_metadata("coco_panoptic_separated"),
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image_root,
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os.path.join(root, panoptic_root),
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os.path.join(root, panoptic_json),
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os.path.join(root, semantic_root),
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instances_json,
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)
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register_coco_panoptic(
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prefix,
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_get_builtin_metadata("coco_panoptic_standard"),
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image_root,
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os.path.join(root, panoptic_root),
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os.path.join(root, panoptic_json),
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instances_json,
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)
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_PREDEFINED_SPLITS_LVIS = {
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"lvis_v1": {
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"lvis_v1_train": ("coco/", "lvis/lvis_v1_train.json"),
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"lvis_v1_val": ("coco/", "lvis/lvis_v1_val.json"),
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"lvis_v1_test_dev": ("coco/", "lvis/lvis_v1_image_info_test_dev.json"),
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"lvis_v1_test_challenge": ("coco/", "lvis/lvis_v1_image_info_test_challenge.json"),
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},
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"lvis_v0.5": {
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"lvis_v0.5_train": ("coco/", "lvis/lvis_v0.5_train.json"),
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"lvis_v0.5_val": ("coco/", "lvis/lvis_v0.5_val.json"),
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"lvis_v0.5_val_rand_100": ("coco/", "lvis/lvis_v0.5_val_rand_100.json"),
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"lvis_v0.5_test": ("coco/", "lvis/lvis_v0.5_image_info_test.json"),
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},
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"lvis_v0.5_cocofied": {
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"lvis_v0.5_train_cocofied": ("coco/", "lvis/lvis_v0.5_train_cocofied.json"),
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"lvis_v0.5_val_cocofied": ("coco/", "lvis/lvis_v0.5_val_cocofied.json"),
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},
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}
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def register_all_lvis(root):
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for dataset_name, splits_per_dataset in _PREDEFINED_SPLITS_LVIS.items():
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for key, (image_root, json_file) in splits_per_dataset.items():
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register_lvis_instances(
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key,
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get_lvis_instances_meta(dataset_name),
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os.path.join(root, json_file) if "://" not in json_file else json_file,
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os.path.join(root, image_root),
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)
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_RAW_CITYSCAPES_SPLITS = {
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"cityscapes_fine_{task}_train": ("cityscapes/leftImg8bit/train/", "cityscapes/gtFine/train/"),
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"cityscapes_fine_{task}_val": ("cityscapes/leftImg8bit/val/", "cityscapes/gtFine/val/"),
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"cityscapes_fine_{task}_test": ("cityscapes/leftImg8bit/test/", "cityscapes/gtFine/test/"),
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}
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def register_all_cityscapes(root):
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for key, (image_dir, gt_dir) in _RAW_CITYSCAPES_SPLITS.items():
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meta = _get_builtin_metadata("cityscapes")
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image_dir = os.path.join(root, image_dir)
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gt_dir = os.path.join(root, gt_dir)
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inst_key = key.format(task="instance_seg")
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DatasetCatalog.register(
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inst_key,
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lambda x=image_dir, y=gt_dir: load_cityscapes_instances(
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x, y, from_json=True, to_polygons=True
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),
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)
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MetadataCatalog.get(inst_key).set(
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image_dir=image_dir, gt_dir=gt_dir, evaluator_type="cityscapes_instance", **meta
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)
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sem_key = key.format(task="sem_seg")
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DatasetCatalog.register(
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sem_key, lambda x=image_dir, y=gt_dir: load_cityscapes_semantic(x, y)
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)
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MetadataCatalog.get(sem_key).set(
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image_dir=image_dir,
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gt_dir=gt_dir,
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evaluator_type="cityscapes_sem_seg",
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ignore_label=255,
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**meta,
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)
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def register_all_pascal_voc(root):
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SPLITS = [
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("voc_2007_trainval", "VOC2007", "trainval"),
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("voc_2007_train", "VOC2007", "train"),
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("voc_2007_val", "VOC2007", "val"),
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("voc_2007_test", "VOC2007", "test"),
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("voc_2012_trainval", "VOC2012", "trainval"),
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("voc_2012_train", "VOC2012", "train"),
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("voc_2012_val", "VOC2012", "val"),
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]
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for name, dirname, split in SPLITS:
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year = 2007 if "2007" in name else 2012
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register_pascal_voc(name, os.path.join(root, dirname), split, year)
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MetadataCatalog.get(name).evaluator_type = "pascal_voc"
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def register_all_ade20k(root):
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root = os.path.join(root, "ADEChallengeData2016")
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for name, dirname in [("train", "training"), ("val", "validation")]:
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image_dir = os.path.join(root, "images", dirname)
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gt_dir = os.path.join(root, "annotations_detectron2", dirname)
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name = f"ade20k_sem_seg_{name}"
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DatasetCatalog.register(
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name, lambda x=image_dir, y=gt_dir: load_sem_seg(y, x, gt_ext="png", image_ext="jpg")
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)
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MetadataCatalog.get(name).set(
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stuff_classes=ADE20K_SEM_SEG_CATEGORIES[:],
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image_root=image_dir,
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sem_seg_root=gt_dir,
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evaluator_type="sem_seg",
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ignore_label=255,
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)
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if __name__.endswith(".builtin"):
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_root = os.path.expanduser(os.getenv("DETECTRON2_DATASETS", "datasets"))
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register_all_coco(_root)
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register_all_lvis(_root)
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register_all_cityscapes(_root)
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register_all_cityscapes_panoptic(_root)
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register_all_pascal_voc(_root)
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register_all_ade20k(_root)
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