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|
| import copy
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| import json
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| import os
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|
|
| from detectron2.data import DatasetCatalog, MetadataCatalog
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| from detectron2.utils.file_io import PathManager
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|
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| from .coco import load_coco_json, load_sem_seg
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|
|
| __all__ = ["register_coco_panoptic", "register_coco_panoptic_separated"]
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|
|
|
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| def load_coco_panoptic_json(json_file, image_dir, gt_dir, meta):
|
| """
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| Args:
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| image_dir (str): path to the raw dataset. e.g., "~/coco/train2017".
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| gt_dir (str): path to the raw annotations. e.g., "~/coco/panoptic_train2017".
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| json_file (str): path to the json file. e.g., "~/coco/annotations/panoptic_train2017.json".
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|
|
| Returns:
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| list[dict]: a list of dicts in Detectron2 standard format. (See
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| `Using Custom Datasets </tutorials/datasets.html>`_ )
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| """
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|
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| def _convert_category_id(segment_info, meta):
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| if segment_info["category_id"] in meta["thing_dataset_id_to_contiguous_id"]:
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| segment_info["category_id"] = meta["thing_dataset_id_to_contiguous_id"][
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| segment_info["category_id"]
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| ]
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| segment_info["isthing"] = True
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| else:
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| segment_info["category_id"] = meta["stuff_dataset_id_to_contiguous_id"][
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| segment_info["category_id"]
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| ]
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| segment_info["isthing"] = False
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| return segment_info
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|
|
| with PathManager.open(json_file) as f:
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| json_info = json.load(f)
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|
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| ret = []
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| for ann in json_info["annotations"]:
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| image_id = int(ann["image_id"])
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|
|
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|
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| image_file = os.path.join(image_dir, os.path.splitext(ann["file_name"])[0] + ".jpg")
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| label_file = os.path.join(gt_dir, ann["file_name"])
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| segments_info = [_convert_category_id(x, meta) for x in ann["segments_info"]]
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| ret.append(
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| {
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| "file_name": image_file,
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| "image_id": image_id,
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| "pan_seg_file_name": label_file,
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| "segments_info": segments_info,
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| }
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| )
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| assert len(ret), f"No images found in {image_dir}!"
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| assert PathManager.isfile(ret[0]["file_name"]), ret[0]["file_name"]
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| assert PathManager.isfile(ret[0]["pan_seg_file_name"]), ret[0]["pan_seg_file_name"]
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| return ret
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|
|
|
|
| def register_coco_panoptic(
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| name, metadata, image_root, panoptic_root, panoptic_json, instances_json=None
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| ):
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| """
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| Register a "standard" version of COCO panoptic segmentation dataset named `name`.
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| The dictionaries in this registered dataset follows detectron2's standard format.
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| Hence it's called "standard".
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|
|
| Args:
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| name (str): the name that identifies a dataset,
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| e.g. "coco_2017_train_panoptic"
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| metadata (dict): extra metadata associated with this dataset.
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| image_root (str): directory which contains all the images
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| panoptic_root (str): directory which contains panoptic annotation images in COCO format
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| panoptic_json (str): path to the json panoptic annotation file in COCO format
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| sem_seg_root (none): not used, to be consistent with
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| `register_coco_panoptic_separated`.
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| instances_json (str): path to the json instance annotation file
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| """
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| panoptic_name = name
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| DatasetCatalog.register(
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| panoptic_name,
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| lambda: load_coco_panoptic_json(panoptic_json, image_root, panoptic_root, metadata),
|
| )
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| MetadataCatalog.get(panoptic_name).set(
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| panoptic_root=panoptic_root,
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| image_root=image_root,
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| panoptic_json=panoptic_json,
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| json_file=instances_json,
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| evaluator_type="coco_panoptic_seg",
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| ignore_label=255,
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| label_divisor=1000,
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| **metadata,
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| )
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|
|
|
|
| def register_coco_panoptic_separated(
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| name, metadata, image_root, panoptic_root, panoptic_json, sem_seg_root, instances_json
|
| ):
|
| """
|
| Register a "separated" version of COCO panoptic segmentation dataset named `name`.
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| The annotations in this registered dataset will contain both instance annotations and
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| semantic annotations, each with its own contiguous ids. Hence it's called "separated".
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|
|
| It follows the setting used by the PanopticFPN paper:
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|
|
| 1. The instance annotations directly come from polygons in the COCO
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| instances annotation task, rather than from the masks in the COCO panoptic annotations.
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|
|
| The two format have small differences:
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| Polygons in the instance annotations may have overlaps.
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| The mask annotations are produced by labeling the overlapped polygons
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| with depth ordering.
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|
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| 2. The semantic annotations are converted from panoptic annotations, where
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| all "things" are assigned a semantic id of 0.
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| All semantic categories will therefore have ids in contiguous
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| range [1, #stuff_categories].
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|
|
| This function will also register a pure semantic segmentation dataset
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| named ``name + '_stuffonly'``.
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|
|
| Args:
|
| name (str): the name that identifies a dataset,
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| e.g. "coco_2017_train_panoptic"
|
| metadata (dict): extra metadata associated with this dataset.
|
| image_root (str): directory which contains all the images
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| panoptic_root (str): directory which contains panoptic annotation images
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| panoptic_json (str): path to the json panoptic annotation file
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| sem_seg_root (str): directory which contains all the ground truth segmentation annotations.
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| instances_json (str): path to the json instance annotation file
|
| """
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| panoptic_name = name + "_separated"
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| DatasetCatalog.register(
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| panoptic_name,
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| lambda: merge_to_panoptic(
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| load_coco_json(instances_json, image_root, panoptic_name),
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| load_sem_seg(sem_seg_root, image_root),
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| ),
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| )
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| MetadataCatalog.get(panoptic_name).set(
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| panoptic_root=panoptic_root,
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| image_root=image_root,
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| panoptic_json=panoptic_json,
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| sem_seg_root=sem_seg_root,
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| json_file=instances_json,
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| evaluator_type="coco_panoptic_seg",
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| ignore_label=255,
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| **metadata,
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| )
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|
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| semantic_name = name + "_stuffonly"
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| DatasetCatalog.register(semantic_name, lambda: load_sem_seg(sem_seg_root, image_root))
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| MetadataCatalog.get(semantic_name).set(
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| sem_seg_root=sem_seg_root,
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| image_root=image_root,
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| evaluator_type="sem_seg",
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| ignore_label=255,
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| **metadata,
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| )
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|
|
|
|
| def merge_to_panoptic(detection_dicts, sem_seg_dicts):
|
| """
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| Create dataset dicts for panoptic segmentation, by
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| merging two dicts using "file_name" field to match their entries.
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|
|
| Args:
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| detection_dicts (list[dict]): lists of dicts for object detection or instance segmentation.
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| sem_seg_dicts (list[dict]): lists of dicts for semantic segmentation.
|
|
|
| Returns:
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| list[dict] (one per input image): Each dict contains all (key, value) pairs from dicts in
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| both detection_dicts and sem_seg_dicts that correspond to the same image.
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| The function assumes that the same key in different dicts has the same value.
|
| """
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| results = []
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| sem_seg_file_to_entry = {x["file_name"]: x for x in sem_seg_dicts}
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| assert len(sem_seg_file_to_entry) > 0
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|
|
| for det_dict in detection_dicts:
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| dic = copy.copy(det_dict)
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| dic.update(sem_seg_file_to_entry[dic["file_name"]])
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| results.append(dic)
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| return results
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|
|
|
|
| if __name__ == "__main__":
|
| """
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| Test the COCO panoptic dataset loader.
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|
|
| Usage:
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| python -m detectron2.data.datasets.coco_panoptic \
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| path/to/image_root path/to/panoptic_root path/to/panoptic_json dataset_name 10
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|
|
| "dataset_name" can be "coco_2017_train_panoptic", or other
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| pre-registered ones
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| """
|
| from detectron2.utils.logger import setup_logger
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| from detectron2.utils.visualizer import Visualizer
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| import detectron2.data.datasets
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| import sys
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| from PIL import Image
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| import numpy as np
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|
|
| logger = setup_logger(name=__name__)
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| assert sys.argv[4] in DatasetCatalog.list()
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| meta = MetadataCatalog.get(sys.argv[4])
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|
|
| dicts = load_coco_panoptic_json(sys.argv[3], sys.argv[1], sys.argv[2], meta.as_dict())
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| logger.info("Done loading {} samples.".format(len(dicts)))
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|
|
| dirname = "coco-data-vis"
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| os.makedirs(dirname, exist_ok=True)
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| num_imgs_to_vis = int(sys.argv[5])
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| for i, d in enumerate(dicts):
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| img = np.array(Image.open(d["file_name"]))
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| visualizer = Visualizer(img, metadata=meta)
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| vis = visualizer.draw_dataset_dict(d)
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| fpath = os.path.join(dirname, os.path.basename(d["file_name"]))
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| vis.save(fpath)
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| if i + 1 >= num_imgs_to_vis:
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| break
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|
|