annotations_creators:
- crowdsourced
language:
- en
multilinguality:
- monolingual
pretty_name: KiloGram
size_categories:
- 1K<n<10K
source_datasets:
- original
tags:
- tangrams
- reference-games
- vision-language
viewer: false
Preprocessed training and evaluation data from KiloGram.
KiloGram dataset and code repo: https://github.com/lil-lab/kilogram
File Formats
Training Set
Texts: train_*.json
are all in the format of {tangramName: list(annotations)}
.
Images: Colored images with parts (under /color
) are named in the format of tangramName_{idx}.png
, where idx
corresponds to the index of the annotation in the text file.
Validation, Development, Heldout Set
Texts: {whole, part}_{black, color}.json
are in the format of {"targets": list(imageFileNames), "images": list(imageFileNames), "texts": list(annotations)}
. We flattened all the contexts and concatenated them into one list for each entry.
E.g. the first 10 elements in "targets"
are the image file name of the target of the first context repeated 10 times; the first 10 of "images"
are the image file names in that context; and the first 10 of "texts"
are the corresponding 10 annotations in that context.
/controlled
contains experiments with constrained contexts controlled for number of parts, and /random
contains ones without. (See Appendix A.8 in paper)
/development/texts/augmented/aug_dev.json
and images/augmented.tar.bz2
are experiments in the same format as above used to evaluate the effect of adding part information.
Intermediate files:
*/text/controlled/eval_batch_data.json
are in the format of
{tangramName: {numOfParts: list({"target": [tangramName_{idx}, annotation], "distractors": list(list([tangramName_{idx}, annotation]))})}}
, used to generate controlled experiment jsons. Note: annotations are descriptions concatenated by "#" instead of in natural English.