license: cc
task_categories:
- image-to-text
task_ids:
- image-captioning
language:
- vi
size_categories:
- 100M<n<1B
pretty_name: Google WIT Vietnamese
Google WIT Vietnamese
This data repos contain extracted data from Google WIT. The extracted data is all for Vietnamese language.
Given x
is a data point in the OG dataset which has keys following OG field_name
, the criteria to filter is
criteria = lambda x: x.get("language", "") == "vi" and x.get("caption_reference_description", "")
Text-related details
All .tsv.gz
files follow OG data files in terms of file names and file structures.
Train split
wit_v1.train.*.tsv.gz
Train data length of each file (not including the header),
17690
17756
17810
17724
17619
17494
17624
17696
17777
17562
Total 176752
Validation split
wit_v1.val.*.tsv.gz
Val data length of each file (not including the header),
292
273
275
320
306
Total 1466
Test split
wit_v1.test.*.tsv.gz
Test data length of each file (not including the header),
215
202
201
201
229
Total 1048
Image-related details
Image URL only
*.image_url_list.txt
are simply lists of image urls from *.tsv.gz
files
Image url length of each file (train, val, test, all)
157281
1271
900
159452
Google Research has made sure that all sets don't share same exact images.
Downloaded Images
⚠ Please for the love of the gods, read this section carefully.
For all.index.fmt_id.image_url_list.tsv
, from left to right, without headers, the columns are index
, fmt_id
, image_url
. It is to map image_url
(in all.image_url_list.txt
) to fmt_id
. It's for downloading images.
fmt_id
is:
- used to name images (with proper image extensions) in
images/
. index
but filled with 6 zeros
Downloading time was less than 36 hours with:
- 90 Mbps
- Processor Intel(R) Core(TM) i7-8550U CPU @ 1.80GHz 1.99 GHz
- No asynchronous
For fail.index.fmt_id.status.image_url_list.tsv
, from left to right, without headers, the columns are index
, fmt_id
, status
, image_url
. It is to track image urls (during downloading) that are inaccessible.
3367 image urls returned 404 (status
values). In other words, we were able to download 97.88839275% of images.
images/
folder takes disk space of:
- 215 GBs (uncompressed)
- 209 GBs (compressed)
We use Pillow to open each image to make sure that downloaded images are usable. We also log all faulty files in corrupted_image_list.json
. There are less than 70 image files.
For corrupted_image_list.json
, for each item in this list, the keys are file_name
, error
. file_name
is fmt_id
with extension but without images/
. Some errors are either:
- files exceed Pillow default limit
- files are truncated
To actually load those files, the following code can be used to change Pillow behavior
from PIL import Image, ImageFile
# For very big image files
Image.MAX_IMAGE_PIXELS = None
# For truncated image files
ImageFile.LOAD_TRUNCATED_IMAGES = True
Zip images/
folder,
zip -r images.zip images/
zip images.zip --out spanned_images.zip -s 40g
https://superuser.com/questions/336219/how-do-i-split-a-zip-file-into-multiple-segments
Unzip spanned_images.*
files,
zip -s 0 spanned_images.zip --out images.zip
unzip images.zip
https://unix.stackexchange.com/questions/40480/how-to-unzip-a-multipart-spanned-zip-on-linux