license: cc-by-sa-3.0
task_categories:
- table-question-answering
- question-answering
language:
- en
tags:
- documents
- tables
- VQA
pretty_name: WikiDT
size_categories:
- 100K<n<1M
WikiDT: Wikipedia Table Document dataset for table extraction and visual question answering
Dataset Description
- Homepage:
- Repository:
- Paper:
- Leaderboard:
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Dataset Summary
The WikiDT contains multi-level annotations and labels for the question-answering task based on images. Meanwhile, as the questions are answered from some table on the image, and WikiDT provides the table annotation to facilitate the diagnosis of the models and decompose the problem, WikiDT can be also directly used as a table recognition dataset.
The dataset contains 16,887 Wikipedia screenshot, which are segmented to 54,032 subpages since the full screenshots are potentially long. In total, there's 159,905 tables in the dataset. The number of question-answer samples is 70,652. Each QA sample contains triplets of <question, answer, full-page screenshot filename>, and is additionally annotated with retrieval labels (which subpage, and which table). 53,698 QA samples also have SQL annotation.
For each subpage, OCR and table extraction annotations from two sources are available. While rendering the screenshots, the ground truth table annotation is recorded. Meanwhile, to make the dataset realistic, we also requested OCR and table extraction from Amazon Textract for each subpage (results obtained during Feb.28, 2023 - Mar.6, 2023).
Supported Tasks and Leaderboards
[More Information Needed]
Languages
[More Information Needed]
Dataset Structure
Once downloaded, the WikiDT has the following parts. The downloaded files are around 77GB. Please ensure you have at least 160GB since we will be extract individual files from the tars.
.
βββ WikiTableExtraction
β βββ detection.partaa
β βββ detection.partab
β βββ detection.partac
β βββ detection.partad
β βββ detection.partae
β βββ detection.partaf
β βββ detection.partag
β βββ structure.partaa
β βββ structure.partab
β βββ structure.partac
β βββ structure.partad
β βββ structure.partae
βββ images.partaa
βββ images.partab
βββ images.partac
βββ images.partad
βββ images.partae
βββ images.partaf
βββ images.partag
βββ images.partah
βββ images.partai
βββ ocr.tar
βββ samples
β βββ test.json
β βββ train.json
β βββ val.json
βββ tsv.tar
Please concat the part files and extract them into respective folder. For example, run
cd WikiTableExtraction/
cat detection.parta* | tar x
to extract the detection
folder.
Once you extracted all the tar files, the WikiDT dataset has the following file structure.
+--WikiDT-dataset
| +--WikiTableExtraction
| | +--detection
| | | +--images # sub page images
| | | +--train # xml table bbox annotation
| | | +--test # xml table bbox annotation
| | | +--val # xml table bbox annotation
| | | images_filelist.txt # index of 54,032 images
| | | test_filelist.txt # index of 5,410 test samples
| | | train_filelist.txt # index of 43,248 train samples
| | | val_filelist.txt # index of 5,347 val samples
| | +--structure
| | | +--images # images cropped to table region
| | | +--train # xml table bbox annotation
| | | +--test # xml table bbox annotation
| | | +--val # xml table bbox annotation
| | | images_filelist.txt # index of 159,898 images
| | | test_filelist.txt # index of 15,989 test samples
| | | train_filelist.txt # index of 129,980 train samples
| | | val_filelist.txt # index of 15,991 val samples
| +--samples # in total 70,652 TableVQA samples from the three json files
| | +--train.json #
| | +--test.json #
| | +--val.json #
| +--images # full page image
| +--ocr # text and bbox for the table content
| | +--textract # detected by Amazon Textract API
| | +--web # extracted from HTML information
| +--tsv # extracted table in tsv format
| | +--textract # detected by Amazon Textract API
| | +--web # extracted from HTML information
Table VQA annotation example
Here is an example of an xml table bbox annotation from WikiDT-dataset/samples/[train|test|val].json/
.
{'all_ocr_files_textract': ['ocr/textract/16301437_page_seg_0.json',
'ocr/textract/16301437_page_seg_1.json'],
'all_ocr_files_web': ['ocr/web/16301437_page_seg_0.json',
'ocr/web/16301437_page_seg_1.json'],
'all_table_files_textract': ['tsv/textract/16301437_page_0.tsv',
'tsv/textract/16301437_page_1.tsv'],
'all_table_files_web': ['tsv/web/16301437_1.tsv', 'tsv/web/16301437_0.tsv'],
'answer': [['don johnson buckeye st. classic']],
'image': '16301437_page.png',
'ocr_retrieval_file_textract': 'ocr/textract/16301437_page_seg_0.json',
'ocr_retrieval_file_web': 'ocr/web/16301437_page_seg_0.json',
'question': 'Name the Event which has a Score of 209-197?',
'sample_id': '14190',
'sql_str': "SELECT `event` FROM cur_table WHERE `score` = '209-197' ",
'sub_page': ['16301437_page_seg_0.png', '16301437_page_seg_1.png'],
'sub_page_retrieved': '16301437_page_seg_0.png',
'subset': 'TFC',
'table_id': '2-16301437-1',
'table_retrieval_file_textract': 'tsv/textract/16301437_page_0.tsv',
'table_retrieval_file_web': 'tsv/web/16301437_1.tsv'}
Table Detection annotation example
Here is an example of an xml table bbox annotation from WikiDT-dataset/WikiTableExtraction/structure/[train|test|val]/
.
<annotation>
<folder />
<filename>204_147_page_crop_5.png</filename>
<source>WikiDT Dataset</source>
<size>
<width>788</width>
<height>540.0</height>
<depth>3</depth>
</size>
<object>
<name>table</name>
<rowspan />
<colspan />
<bndbox>
<xmin>10</xmin>
<ymin>10</ymin>
<xmax>778</xmax>
<ymax>530</ymax>
</bndbox>
</object>
<object>
<name>header row</name>
<rowspan />
<colspan />
<bndbox>
<xmin>10</xmin>
<ymin>10</ymin>
<xmax>778</xmax>
<ymax>33</ymax>
</bndbox>
</object>
<object>
<name>header cell</name>
<rowspan />
<colspan>10</colspan>
<bndbox>
<xmin>12</xmin>
<ymin>35</ymin>
<xmax>776</xmax>
<ymax>58</ymax>
</bndbox>
</object>
<object>
<name>table row</name>
<rowspan />
<colspan />
<bndbox>
<xmin>10</xmin>
<ymin>60</ymin>
<xmax>778</xmax>
<ymax>530</ymax>
</bndbox>
</object>
</annotation>
Dataset Creation
Curation Rationale
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Source Data
Initial Data Collection and Normalization
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Who are the source language producers?
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Annotations
Annotation process
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Who are the annotators?
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Personal and Sensitive Information
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Considerations for Using the Data
Social Impact of Dataset
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Discussion of Biases
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Other Known Limitations
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Additional Information
Dataset Curators
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Licensing Information
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Citation Information
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Contributions
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