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metadata
language:
  - en
size_categories:
  - 10K<n<100K
task_categories:
  - image-classification
dataset_info:
  features:
    - name: image
      dtype: image
    - name: label
      dtype:
        class_label:
          names:
            '0': red and white circle 20 kph speed limit
            '1': red and white circle 30 kph speed limit
            '2': red and white circle 50 kph speed limit
            '3': red and white circle 60 kph speed limit
            '4': red and white circle 70 kph speed limit
            '5': red and white circle 80 kph speed limit
            '6': end / de-restriction of 80 kph speed limit
            '7': red and white circle 100 kph speed limit
            '8': red and white circle 120 kph speed limit
            '9': red and white circle red car and black car no passing
            '10': red and white circle red truck and black car no passing
            '11': red and white triangle road intersection warning
            '12': white and yellow diamond priority road
            '13': red and white upside down triangle yield right-of-way
            '14': stop
            '15': empty red and white circle
            '16': red and white circle no truck entry
            '17': red circle with white horizonal stripe no entry
            '18': red and white triangle with exclamation mark warning
            '19': red and white triangle with black left curve approaching warning
            '20': red and white triangle with black right curve approaching warning
            '21': red and white triangle with black double curve approaching warning
            '22': red and white triangle rough / bumpy road warning
            '23': red and white triangle car skidding / slipping warning
            '24': red and white triangle with merging / narrow lanes warning
            '25': >-
              red and white triangle with person digging / construction / road
              work warning
            '26': red and white triangle with traffic light approaching warning
            '27': red and white triangle with person walking warning
            '28': red and white triangle with child and person walking warning
            '29': red and white triangle with bicyle warning
            '30': red and white triangle with snowflake / ice warning
            '31': red and white triangle with deer warning
            '32': white circle with gray strike bar no speed limit
            '33': blue circle with white right turn arrow mandatory
            '34': blue circle with white left turn arrow mandatory
            '35': blue circle with white forward arrow mandatory
            '36': blue circle with white forward or right turn arrow mandatory
            '37': blue circle with white forward or left turn arrow mandatory
            '38': blue circle with white keep right arrow mandatory
            '39': blue circle with white keep left arrow mandatory
            '40': blue circle with white arrows indicating a traffic circle
            '41': >-
              white circle with gray strike bar indicating no passing for cars
              has ended
            '42': >-
              white circle with gray strike bar indicating no passing for trucks
              has ended
  splits:
    - name: train
      num_bytes: 252930879.36
      num_examples: 26640
    - name: test
      num_bytes: 104816357.02
      num_examples: 12630
    - name: contrast
      num_bytes: 104816357.02
      num_examples: 12630
    - name: gaussian_noise
      num_bytes: 104816357.02
      num_examples: 12630
    - name: impulse_noise
      num_bytes: 104816357.02
      num_examples: 12630
    - name: jpeg_compression
      num_bytes: 104816357.02
      num_examples: 12630
    - name: motion_blur
      num_bytes: 104816357.02
      num_examples: 12630
    - name: pixelate
      num_bytes: 39121740.4
      num_examples: 12630
    - name: spatter
      num_bytes: 104816357.02
      num_examples: 12630
  download_size: 1027074522
  dataset_size: 1025767118.8999999
configs:
  - config_name: default
    data_files:
      - split: train
        path: data/train-*
      - split: test
        path: data/test-*
      - split: contrast
        path: data/contrast-*
      - split: gaussian_noise
        path: data/gaussian_noise-*
      - split: impulse_noise
        path: data/impulse_noise-*
      - split: jpeg_compression
        path: data/jpeg_compression-*
      - split: motion_blur
        path: data/motion_blur-*
      - split: pixelate
        path: data/pixelate-*
      - split: spatter
        path: data/spatter-*

Dataset Card for German Traffic Sign Recognition Benchmark

This dataset contains images of 43 classes of traffic signs. It is intended for developing and benchmarking traffic sign recognition systems.

Dataset Details

Dataset Description

The German Traffic Sign Recognition Benchmark (GTSRB) is a multi-class classification dataset featuring 43 classes of traffic signs. The images were cropped from a larger set of images to focus on the traffic sign and eliminate background. Multiple data augmentations such as Gaussian noise, motion blur, contrast changes, etc. are provided as additional test sets to benchmark model robustness.

Dataset Sources

Uses

Direct Use

from datasets import load_dataset

dataset = load_dataset('tanganke/gtsrb')

Dataset Structure

The dataset is provided in 9 splits, including training data and clean test data:

  • train: 26,640 images
  • test: 12,630 images

and 7 kinds of corrupted test datasets to evaluate the robustness:

  • contrast: 12,630 contrast-adjusted test images
  • gaussian_noise: 12,630 Gaussian noise augmented test images
  • impulse_noise: 12,630 impulse noise augmented test images
  • jpeg_compression: 12,630 JPEG-compressed test images
  • motion_blur: 12,630 motion-blurred test images
  • pixelate: 12,630 pixelated test images
  • spatter: 12,630 spatter augmented test images

Each split contains 43 classes of traffic signs, with the class labels and names specified in the dataset metadata.

Citation [optional]

You can use any of the provided BibTeX entries for your reference list:

@article{stallkampManVsComputer2012,
  title = {Man vs. Computer: {{Benchmarking}} Machine Learning Algorithms for Traffic Sign Recognition},
  shorttitle = {Man vs. Computer},
  author = {Stallkamp, J. and Schlipsing, M. and Salmen, J. and Igel, C.},
  year = {2012},
  month = aug,
  journal = {Neural Networks},
  series = {Selected {{Papers}} from {{IJCNN}} 2011},
  volume = {32},
  pages = {323--332},
  issn = {0893-6080},
  doi = {10.1016/j.neunet.2012.02.016},
  url = {https://www.sciencedirect.com/science/article/pii/S0893608012000457},
  keywords = {Benchmarking,Convolutional neural networks,Machine learning,Traffic sign recognition}
}

@misc{yangAdaMergingAdaptiveModel2023,
  title = {{{AdaMerging}}: {{Adaptive Model Merging}} for {{Multi-Task Learning}}},
  shorttitle = {{{AdaMerging}}},
  author = {Yang, Enneng and Wang, Zhenyi and Shen, Li and Liu, Shiwei and Guo, Guibing and Wang, Xingwei and Tao, Dacheng},
  year = {2023},
  month = oct,
  number = {arXiv:2310.02575},
  eprint = {2310.02575},
  primaryclass = {cs},
  publisher = {arXiv},
  doi = {10.48550/arXiv.2310.02575},
  url = {http://arxiv.org/abs/2310.02575},
  archiveprefix = {arxiv},
  keywords = {Computer Science - Computer Vision and Pattern Recognition,Computer Science - Machine Learning}
}

@misc{tangConcreteSubspaceLearning2023,
  title = {Concrete {{Subspace Learning}} Based {{Interference Elimination}} for {{Multi-task Model Fusion}}},
  author = {Tang, Anke and Shen, Li and Luo, Yong and Ding, Liang and Hu, Han and Du, Bo and Tao, Dacheng},
  year = {2023},
  month = dec,
  number = {arXiv:2312.06173},
  eprint = {2312.06173},
  publisher = {arXiv},
  url = {http://arxiv.org/abs/2312.06173},
  archiveprefix = {arxiv},
  copyright = {All rights reserved},
  keywords = {Computer Science - Machine Learning}
}


@misc{tangMergingMultiTaskModels2024,
  title = {Merging {{Multi-Task Models}} via {{Weight-Ensembling Mixture}} of {{Experts}}},
  author = {Tang, Anke and Shen, Li and Luo, Yong and Yin, Nan and Zhang, Lefei and Tao, Dacheng},
  year = {2024},
  month = feb,
  number = {arXiv:2402.00433},
  eprint = {2402.00433},
  primaryclass = {cs},
  publisher = {arXiv},
  doi = {10.48550/arXiv.2402.00433},
  url = {http://arxiv.org/abs/2402.00433},
  archiveprefix = {arxiv},
  copyright = {All rights reserved},
  keywords = {Computer Science - Computer Vision and Pattern Recognition,Computer Science - Machine Learning}
}

Dataset Card Authors

Anke Tang

Dataset Card Contact

tang.anke@foxmail.com