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metadata
license: cc-by-nc-4.0
task_categories:
  - image-classification
  - object-detection
language:
  - en
  - zh
tags:
  - dataset
pretty_name: TT100K
size_categories:
  - 10K<n<100K
dataset_info:
  - config_name: default
    features:
      - name: image
        dtype: image
      - name: objects
        sequence:
          - name: category
            dtype:
              class_label:
                names:
                  '0': i1
                  '1': i10
                  '2': i11
                  '3': i12
                  '4': i13
                  '5': i14
                  '6': i15
                  '7': i2
                  '8': i3
                  '9': i4
                  '10': i5
                  '11': il100
                  '12': il110
                  '13': il50
                  '14': il60
                  '15': il70
                  '16': il80
                  '17': il90
                  '18': io
                  '19': ip
                  '20': p1
                  '21': p10
                  '22': p11
                  '23': p12
                  '24': p13
                  '25': p14
                  '26': p15
                  '27': p16
                  '28': p17
                  '29': p18
                  '30': p19
                  '31': p2
                  '32': p20
                  '33': p21
                  '34': p22
                  '35': p23
                  '36': p24
                  '37': p25
                  '38': p26
                  '39': p27
                  '40': p28
                  '41': p3
                  '42': p4
                  '43': p5
                  '44': p6
                  '45': p7
                  '46': p8
                  '47': p9
                  '48': pa10
                  '49': pa12
                  '50': pa13
                  '51': pa14
                  '52': pa8
                  '53': pb
                  '54': pc
                  '55': pg
                  '56': ph1.5
                  '57': ph2
                  '58': ph2.1
                  '59': ph2.2
                  '60': ph2.4
                  '61': ph2.5
                  '62': ph2.8
                  '63': ph2.9
                  '64': ph3
                  '65': ph3.2
                  '66': ph3.5
                  '67': ph3.8
                  '68': ph4
                  '69': ph4.2
                  '70': ph4.3
                  '71': ph4.5
                  '72': ph4.8
                  '73': ph5
                  '74': ph5.3
                  '75': ph5.5
                  '76': pl10
                  '77': pl100
                  '78': pl110
                  '79': pl120
                  '80': pl15
                  '81': pl20
                  '82': pl25
                  '83': pl30
                  '84': pl35
                  '85': pl40
                  '86': pl5
                  '87': pl50
                  '88': pl60
                  '89': pl65
                  '90': pl70
                  '91': pl80
                  '92': pl90
                  '93': pm10
                  '94': pm13
                  '95': pm15
                  '96': pm1.5
                  '97': pm2
                  '98': pm20
                  '99': pm25
                  '100': pm30
                  '101': pm35
                  '102': pm40
                  '103': pm46
                  '104': pm5
                  '105': pm50
                  '106': pm55
                  '107': pm8
                  '108': pn
                  '109': pne
                  '110': po
                  '111': pr10
                  '112': pr100
                  '113': pr20
                  '114': pr30
                  '115': pr40
                  '116': pr45
                  '117': pr50
                  '118': pr60
                  '119': pr70
                  '120': pr80
                  '121': ps
                  '122': pw2
                  '123': pw2.5
                  '124': pw3
                  '125': pw3.2
                  '126': pw3.5
                  '127': pw4
                  '128': pw4.2
                  '129': pw4.5
                  '130': w1
                  '131': w10
                  '132': w12
                  '133': w13
                  '134': w16
                  '135': w18
                  '136': w20
                  '137': w21
                  '138': w22
                  '139': w24
                  '140': w28
                  '141': w3
                  '142': w30
                  '143': w31
                  '144': w32
                  '145': w34
                  '146': w35
                  '147': w37
                  '148': w38
                  '149': w41
                  '150': w42
                  '151': w43
                  '152': w44
                  '153': w45
                  '154': w46
                  '155': w47
                  '156': w48
                  '157': w49
                  '158': w5
                  '159': w50
                  '160': w55
                  '161': w56
                  '162': w57
                  '163': w58
                  '164': w59
                  '165': w60
                  '166': w62
                  '167': w63
                  '168': w66
                  '169': w8
                  '170': wo
                  '171': i6
                  '172': i7
                  '173': i8
                  '174': i9
                  '175': ilx
                  '176': p29
                  '177': w29
                  '178': w33
                  '179': w36
                  '180': w39
                  '181': w4
                  '182': w40
                  '183': w51
                  '184': w52
                  '185': w53
                  '186': w54
                  '187': w6
                  '188': w61
                  '189': w64
                  '190': w65
                  '191': w67
                  '192': w7
                  '193': w9
                  '194': pax
                  '195': pd
                  '196': pe
                  '197': phx
                  '198': plx
                  '199': pmx
                  '200': pnl
                  '201': prx
                  '202': pwx
                  '203': w11
                  '204': w14
                  '205': w15
                  '206': w17
                  '207': w19
                  '208': w2
                  '209': w23
                  '210': w25
                  '211': w26
                  '212': w27
                  '213': pl0
                  '214': pl4
                  '215': pl3
                  '216': pm2.5
                  '217': ph4.4
                  '218': pn40
                  '219': ph3.3
                  '220': ph2.6
          - name: bbox
            dtype:
              - name: xmin
                dtype: float64
              - name: ymin
                dtype: float64
              - name: ymax
                dtype: float64
              - name: xmax
                dtype: float64
    splits:
      - name: train
        num_bytes: 1839408
        num_examples: 6105
      - name: validation
        num_bytes: 277496
        num_examples: 1097
      - name: test
        num_bytes: 917275
        num_examples: 3071
    download_size: 19152969603
    dataset_size: 3034179
configs:
  - config_name: default
    data_files:
      - split: train
        path: default/train/data-*.arrow
      - split: validation
        path: default/validation/data-*.arrow
      - split: test
        path: default/test/data-*.arrow

Intro

The Tsinghua–Tencent 100K (TT100K) dataset is a large-scale traffic sign benchmark built from 100,000 Tencent Street View images, containing over 30,000 annotated instances across 221 categories. Designed for real-world detection and classification tasks, it features significant variation in lighting, weather, viewpoint, and distance. While the original study focuses on a 45-class subset using a 100-instance threshold per class, the Ultralytics configuration retains all 221 categories, including many with sparse samples, making the dataset both comprehensive and challenging for robust model development.

Usage

from datasets import load_dataset
ds = load_dataset(
    "Genius-Society/tt100k",
    name="default",
    split="train",
    cache_dir="./__pycache__",
)
for i in ds:
    print(i)

Maintenance

GIT_LFS_SKIP_SMUDGE=1 git clone git@hf.co:datasets/Genius-Society/tt100k
cd tt100k

Mirror

https://www.modelscope.cn/datasets/Genius-Society/tt100k

Thanks