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metadata
license: cc-by-4.0
task_categories:
  - image-to-image
tags:
  - remote-sensing
  - cloud-removal
  - SAR
  - sentinel
pretty_name: SEN12MS-CR
citation: |
  @article{meraner2020cloud,
    title={Cloud removal in Sentinel-2 imagery using a deep residual neural network and SAR-optical data fusion},
    author={Meraner, Andrea and Ebel, Patrick and Zhu, Xiao Xiang and Schmitt, Michael},
    journal={ISPRS Journal of Photogrammetry and Remote Sensing},
    volume={166},
    pages={333--346},
    year={2020}
  }
size_categories:
  - 100K<n<1M
configs:
  - config_name: default
    data_files:
      - split: train
        path:
          - spring/scene_1.parquet
          - spring/scene_6.parquet
          - spring/scene_8.parquet
          - spring/scene_9.parquet
          - spring/scene_15.parquet
          - spring/scene_21.parquet
          - spring/scene_26.parquet
          - spring/scene_39.parquet
          - spring/scene_40.parquet
          - spring/scene_45.parquet
          - spring/scene_58.parquet
          - spring/scene_63.parquet
          - spring/scene_66.parquet
          - spring/scene_75.parquet
          - spring/scene_77.parquet
          - spring/scene_97.parquet
          - spring/scene_100.parquet
          - spring/scene_101.parquet
          - spring/scene_109.parquet
          - spring/scene_110.parquet
          - spring/scene_113.parquet
          - spring/scene_115.parquet
          - spring/scene_117.parquet
          - spring/scene_119.parquet
          - spring/scene_120.parquet
          - spring/scene_121.parquet
          - spring/scene_124.parquet
          - spring/scene_126.parquet
          - spring/scene_128.parquet
          - spring/scene_132.parquet
          - spring/scene_134.parquet
          - spring/scene_141.parquet
          - spring/scene_142.parquet
          - spring/scene_145.parquet
          - spring/scene_147.parquet
          - summer/scene_4.parquet
          - summer/scene_7.parquet
          - summer/scene_11.parquet
          - summer/scene_15.parquet
          - summer/scene_25.parquet
          - summer/scene_27.parquet
          - summer/scene_31.parquet
          - summer/scene_36.parquet
          - summer/scene_40.parquet
          - summer/scene_42.parquet
          - summer/scene_43.parquet
          - summer/scene_47.parquet
          - summer/scene_55.parquet
          - summer/scene_56.parquet
          - summer/scene_72.parquet
          - summer/scene_76.parquet
          - summer/scene_86.parquet
          - summer/scene_87.parquet
          - summer/scene_89.parquet
          - summer/scene_90.parquet
          - summer/scene_93.parquet
          - summer/scene_95.parquet
          - summer/scene_100.parquet
          - summer/scene_101.parquet
          - summer/scene_102.parquet
          - summer/scene_113.parquet
          - summer/scene_114.parquet
          - summer/scene_115.parquet
          - summer/scene_120.parquet
          - summer/scene_121.parquet
          - summer/scene_123.parquet
          - summer/scene_124.parquet
          - summer/scene_125.parquet
          - summer/scene_126.parquet
          - summer/scene_132.parquet
          - summer/scene_133.parquet
          - summer/scene_135.parquet
          - summer/scene_137.parquet
          - summer/scene_139.parquet
          - summer/scene_140.parquet
          - summer/scene_143.parquet
          - summer/scene_146.parquet
          - summer/scene_147.parquet
          - fall/scene_1.parquet
          - fall/scene_3.parquet
          - fall/scene_4.parquet
          - fall/scene_6.parquet
          - fall/scene_11.parquet
          - fall/scene_14.parquet
          - fall/scene_19.parquet
          - fall/scene_22.parquet
          - fall/scene_26.parquet
          - fall/scene_27.parquet
          - fall/scene_28.parquet
          - fall/scene_30.parquet
          - fall/scene_31.parquet
          - fall/scene_33.parquet
          - fall/scene_35.parquet
          - fall/scene_37.parquet
          - fall/scene_39.parquet
          - fall/scene_40.parquet
          - fall/scene_41.parquet
          - fall/scene_42.parquet
          - fall/scene_57.parquet
          - fall/scene_64.parquet
          - fall/scene_71.parquet
          - fall/scene_77.parquet
          - fall/scene_81.parquet
          - fall/scene_82.parquet
          - fall/scene_83.parquet
          - fall/scene_85.parquet
          - fall/scene_88.parquet
          - fall/scene_91.parquet
          - fall/scene_93.parquet
          - fall/scene_100.parquet
          - fall/scene_104.parquet
          - fall/scene_105.parquet
          - fall/scene_107.parquet
          - fall/scene_109.parquet
          - fall/scene_110.parquet
          - fall/scene_112.parquet
          - fall/scene_114.parquet
          - fall/scene_116.parquet
          - fall/scene_119.parquet
          - fall/scene_120.parquet
          - fall/scene_122.parquet
          - fall/scene_125.parquet
          - fall/scene_128.parquet
          - fall/scene_131.parquet
          - fall/scene_133.parquet
          - fall/scene_134.parquet
          - fall/scene_135.parquet
          - fall/scene_136.parquet
          - fall/scene_141.parquet
          - fall/scene_142.parquet
          - fall/scene_144.parquet
          - fall/scene_147.parquet
          - fall/scene_148.parquet
          - fall/scene_149.parquet
          - winter/scene_8.parquet
          - winter/scene_21.parquet
          - winter/scene_25.parquet
          - winter/scene_42.parquet
          - winter/scene_47.parquet
          - winter/scene_49.parquet
          - winter/scene_55.parquet
          - winter/scene_59.parquet
          - winter/scene_61.parquet
          - winter/scene_62.parquet
          - winter/scene_64.parquet
          - winter/scene_68.parquet
          - winter/scene_75.parquet
          - winter/scene_81.parquet
          - winter/scene_94.parquet
          - winter/scene_102.parquet
          - winter/scene_104.parquet
          - winter/scene_112.parquet
          - winter/scene_116.parquet
          - winter/scene_135.parquet
          - winter/scene_146.parquet
      - split: validation
        path:
          - spring/scene_17.parquet
          - summer/scene_17.parquet
          - summer/scene_19.parquet
          - summer/scene_80.parquet
          - summer/scene_127.parquet
          - fall/scene_65.parquet
          - winter/scene_22.parquet
          - winter/scene_84.parquet
          - winter/scene_107.parquet
          - winter/scene_130.parquet
      - split: test
        path:
          - spring/scene_31.parquet
          - spring/scene_44.parquet
          - spring/scene_106.parquet
          - spring/scene_123.parquet
          - spring/scene_140.parquet
          - summer/scene_73.parquet
          - summer/scene_119.parquet
          - fall/scene_139.parquet
          - winter/scene_63.parquet
          - winter/scene_108.parquet

SEN12MS-CR

Reorganized mirror of the SEN12MS-CR dataset in Parquet format.

Quick Start

from datasets import load_dataset
import numpy as np

ds = load_dataset("Hermanni/sen12mscr", streaming=True)

for sample in ds["train"]:
    sar = np.frombuffer(sample["sar"], dtype=np.float32).reshape(sample["sar_shape"])
    cloudy = np.frombuffer(sample["cloudy"], dtype=np.int16).reshape(sample["opt_shape"])
    target = np.frombuffer(sample["target"], dtype=np.int16).reshape(sample["opt_shape"])

    # Optical tensors are stored as HWC: (256, 256, 13)
    # Convert to CHW if needed:
    # cloudy = np.transpose(cloudy, (2, 0, 1))
    # target = np.transpose(target, (2, 0, 1))
    break

Notes

  • sar is stored as float32
  • cloudy and target are stored as int16
  • opt_shape is stored in HWC order, typically (256, 256, 13)
  • The dtype column is a legacy field and should not be used for decoding cloudy or target

Full Download

ds = load_dataset("Hermanni/sen12mscr", split="train")

PyTorch Example

from torch.utils.data import Dataset, DataLoader
from datasets import load_dataset
import numpy as np
import torch

class SEN12MSCR(Dataset):
    def __init__(self, hf_dataset, normalize=True, chw_optical=True):
        self.ds = hf_dataset
        self.normalize = normalize
        self.chw_optical = chw_optical

    def __len__(self):
        return len(self.ds)

    def __getitem__(self, idx):
        s = self.ds[idx]

        sar = np.frombuffer(s["sar"], dtype=np.float32).reshape(s["sar_shape"]).astype(np.float32)
        cloudy = np.frombuffer(s["cloudy"], dtype=np.int16).reshape(s["opt_shape"]).astype(np.float32)
        target = np.frombuffer(s["target"], dtype=np.int16).reshape(s["opt_shape"]).astype(np.float32)

        if self.chw_optical:
            cloudy = np.transpose(cloudy, (2, 0, 1))
            target = np.transpose(target, (2, 0, 1))

        sar = torch.from_numpy(sar.copy())
        cloudy = torch.from_numpy(cloudy.copy())
        target = torch.from_numpy(target.copy())

        if self.normalize:
            cloudy /= 10000.0
            target /= 10000.0

        return {"sar": sar, "cloudy": cloudy, "target": target}

ds = load_dataset("Hermanni/sen12mscr", split="train")
loader = DataLoader(SEN12MSCR(ds), batch_size=8, shuffle=True, num_workers=4)

Contents

  • ~122,218 triplets
  • SAR: Sentinel-1, 2 channels, float32
  • Cloudy: Sentinel-2, 13 channels, int16
  • Target: Sentinel-2, 13 channels, int16
  • 4 seasons, 175 global ROIs (2018)

Columns

Column Type Description
sar binary SAR bytes, decode as float32, reshape with sar_shape
cloudy binary Cloudy S2 bytes, decode as int16, reshape with opt_shape
target binary Cloud-free S2 bytes, decode as int16, reshape with opt_shape
sar_shape list[int] SAR shape, typically [2, 256, 256]
opt_shape list[int] Optical shape, typically [256, 256, 13]
dtype string Legacy field from SAR export; do not use for optical decoding
season string spring / summer / fall / winter
scene string Scene number
patch string Patch ID

License

CC BY 4.0 (https://creativecommons.org/licenses/by/4.0/)

Source