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jpodivin commited on
Commit
7fed69a
1 Parent(s): b1e50bc

Removing download script

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Signed-off-by: Jiri Podivin <jpodivin@gmail.com>

Files changed (1) hide show
  1. plantorgans.py +0 -168
plantorgans.py DELETED
@@ -1,168 +0,0 @@
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- import datasets
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- import pandas as pd
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- import glob
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- from pathlib import Path
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- from PIL import Image, ImageOps
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-
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- _DESCRIPTION = """Photos of various plants with their major, above ground organs labeled. Includes labels for stem, leafs, fruits and flowers."""
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-
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- _HOMEPAGE = "https://huggingface.co/datasets/jpodivin/plantorgans"
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-
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- _CITATION = """"""
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-
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- _LICENSE = "MIT"
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-
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- _BASE_URL = "https://huggingface.co/datasets/jpodivin/plantorgans/resolve/main/"
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- _TRAIN_URLS = [_BASE_URL + f"sourcedata_labeled.tar.{i:02}" for i in range(0, 8)]
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- _TEST_URLS = [_BASE_URL + f"sourcedata_labeled.tar.{i:02}" for i in range(8, 12)]
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- _MASKS_URLS = [_BASE_URL + f"masks.tar.0{i}" for i in range(0, 2)]
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- _SEMANTIC_MASKS_URLS = "semantic_masks.tar.gz"
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-
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- _SEMANTIC_METADATA_URLS = {
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- 'train': 'https://huggingface.co/datasets/jpodivin/plantorgans/resolve/main/metadata_semantic_train.csv',
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- 'test': 'https://huggingface.co/datasets/jpodivin/plantorgans/resolve/main/metadata_semantic_test.csv'
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- }
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-
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- _PANOPTIC_METADATA_URLS = {
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- 'train': 'https://huggingface.co/datasets/jpodivin/plantorgans/resolve/main/metadata_train.csv',
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- 'test': 'https://huggingface.co/datasets/jpodivin/plantorgans/resolve/main/metadata_test.csv'
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- }
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-
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-
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- class PlantOrgansConfig(datasets.BuilderConfig):
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- """Builder Config for PlantOrgans"""
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-
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- def __init__(self, data_urls, metadata_urls, splits, **kwargs):
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- """BuilderConfig for PlantOrgans.
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- Args:
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- data_urls: list of `string`s, urls to download the zip files from.
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- metadata_urls: dictionary with keys 'train' and 'validation' containing the archive metadata URLs
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- **kwargs: keyword arguments forwarded to super.
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- """
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- super().__init__(version=datasets.Version("1.0.0"), **kwargs)
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- self.data_urls = data_urls
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- self.metadata_urls = metadata_urls
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- self.splits = splits
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-
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-
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- class PlantOrgans(datasets.GeneratorBasedBuilder):
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- """Plantorgans dataset
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- """
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- BUILDER_CONFIGS = [
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- PlantOrgansConfig(
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- name="semantic_segmentation_full",
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- description="This configuration contains segmentation masks.",
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- data_urls=_BASE_URL,
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- metadata_urls=_SEMANTIC_METADATA_URLS,
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- splits=['train', 'test'],
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- ),
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- PlantOrgansConfig(
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- name="instance_segmentation_full",
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- description="This configuration contains segmentation masks.",
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- data_urls=_BASE_URL,
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- metadata_urls=_PANOPTIC_METADATA_URLS,
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- splits=['train', 'test'],
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- ),
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- ]
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-
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- def _info(self):
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- features=datasets.Features(
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- {
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- "image": datasets.Image(),
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- "mask": datasets.Image(),
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- "image_name": datasets.Value(dtype="string"),
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- })
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- return datasets.DatasetInfo(
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- description=_DESCRIPTION,
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- features=features,
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- supervised_keys=("image", "mask"),
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- homepage=_HOMEPAGE,
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- citation=_CITATION,
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- license=_LICENSE,
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- )
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-
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-
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- def _split_generators(self, dl_manager):
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-
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- train_archives_paths = dl_manager.download_and_extract(_TRAIN_URLS)
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- test_archives_paths = dl_manager.download_and_extract(_TEST_URLS)
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-
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- train_paths = []
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- test_paths = []
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-
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- for p in train_archives_paths:
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- train_paths.extend(glob.glob(str(p)+'/sourcedata/labeled/**.jpg'))
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- for p in test_archives_paths:
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- test_paths.extend(glob.glob(str(p)+'/sourcedata/labeled/**.jpg'))
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-
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- if self.config.name == 'instance_segmentation_full':
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- metadata_urls = _PANOPTIC_METADATA_URLS
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- mask_urls = _MASKS_URLS
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- mask_glob = '/masks/**.png'
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- else:
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- metadata_urls = _SEMANTIC_METADATA_URLS
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- mask_urls = _SEMANTIC_MASKS_URLS
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- mask_glob = '/semantic_masks/**.png'
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-
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- split_metadata_paths = dl_manager.download(metadata_urls)
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-
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- mask_archives_paths = dl_manager.download_and_extract(mask_urls)
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-
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- mask_paths = []
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- for p in mask_archives_paths:
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- mask_paths.extend(glob.glob(str(p)+mask_glob))
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-
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- return [
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- datasets.SplitGenerator(
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- name=datasets.Split.TRAIN,
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- gen_kwargs={
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- "images": train_paths,
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- "metadata_path": split_metadata_paths["train"],
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- "masks_path": mask_paths,
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- },
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- ),
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- datasets.SplitGenerator(
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- name=datasets.Split.TEST,
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- gen_kwargs={
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- "images": test_paths,
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- "metadata_path": split_metadata_paths["test"],
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- "masks_path": mask_paths,
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- },
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- ),
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- ]
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-
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-
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- def _generate_examples(self, images, metadata_path, masks_path):
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- """
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- images: path to image directory
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- metadata_path: path to metadata csv
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- masks_path: path to masks
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- """
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-
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- # Get local image paths
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- image_paths = pd.DataFrame(
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- [(str(Path(*Path(e).parts[-3:])), e) for e in images], columns=['image', 'image_path'])
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-
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- # Get local mask paths
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- masks_paths = pd.DataFrame(
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- [(str(Path(*Path(e).parts[-2:])), e) for e in masks_path], columns=['mask', 'mask_path'])
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-
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- # Get all common about images and masks from csv
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- metadata = pd.read_csv(metadata_path)
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- metadata['image'] = metadata['image_path'].apply(lambda x: str(Path(x).parts[-1]))
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- metadata['mask'] = metadata['mask_path'].apply(lambda x: str(Path(x).parts[-1]))
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-
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- # Merge dataframes
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- metadata = metadata.merge(masks_paths, on='mask', how='inner')
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- metadata = metadata.merge(image_paths, on='image', how='inner')
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-
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- # Make examples and yield
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- for i, r in metadata.iterrows():
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- # Example contains paths to mask, source image, certainty of label,
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- # and name of source image.
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- example = {
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- 'mask': r['mask_path'],
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- 'image': r['image_path'],
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- 'image_name': Path(r['image_path']).parts[-1],
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- }
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- yield i, example