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Shore Livecams: A Maritime Dataset for Deep Learning based Object Detection

A maritime dataset for object detection. The dataset is a collection of high definition (HD), full high definition (FHD), ultra high definition (UHD) images captured from live video feeds recorded across various port based areas of Germany. These images contain multiple instances of objects which are primarily classified into three different classes and annotated accordingly.

Prepaired to be used with YOLO PyTorch implementations.

Label formats

Labels are provided in folloing formats:

  • YOLO
  • PascalVOC .xml (Foldername: train_voc)
  • COCO .json

Folder structure

The folder structure looks like this:

images/
    test/
        2ux5cw8z_1080_2022-07-16_11-26_output_0.jpeg
        ...
    train/
        2ux5cw8z_1080_2022-07-17_02-54_output_0.jpeg
        ...
labels/
    test/
        2ux5cw8z_1080_2022-07-16_11-26_output_0.txt
        ...
    test_voc/
        2ux5cw8z_1080_2022-07-16_11-26_output_0.xml
        ...
    train/
        2ux5cw8z_1080_2022-07-17_02-54_output_0.txt
        ...
    train_voc/
        2ux5cw8z_1080_2022-07-17_02-54_output_0.xml
        ...
    shore_livecams.yaml # YOLO v5 PyTorch dataset file for dataloader
    train.json
    test.json
    train+test.json

Dataset Statistics

  • 3 classes [human, land, sea]
  • 17,6 objects per image average
  • Image resolution:
    • 720p (116)
    • 1080p (392)
    • 3840p (17)

Distribution in total, train and test

images objects human land sea
total 525 9243 2821 3378 3044
train 394 5643 1624 1976 2043
test 131 3600 1197 1402 1001

Citation

If you find this dataset helpful, please cite this paper (to be published):

D. Ahlers, P. Bhattacharya, P. Nowak, and U. Zölzer, "Shore Livecams: A Maritime Dataset for Deep Learning based Object Detection", in 17th International Conference on Signal Image Technology & Internet based Systems (SITIS), 2023.