elia / refer /README.md
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## Note
This API is able to load all 4 referring expression datasets, i.e., RefClef, RefCOCO, RefCOCO+ and RefCOCOg.
They are with different train/val/test split by UNC, Google and UC Berkeley respectively. We provide all kinds of splits here.
<table width="100%">
<tr>
<td><img src="http://bvisionweb1.cs.unc.edu/licheng/referit/refer_example.jpg", alt="Mountain View" width="95%"></td>
</tr>
</table>
## Citation
If you used the following three datasets RefClef, RefCOCO and RefCOCO+ that were collected by UNC, please consider cite our EMNLP2014 paper; if you want to compare with our recent results, please check our ECCV2016 paper.
```bash
Kazemzadeh, Sahar, et al. "ReferItGame: Referring to Objects in Photographs of Natural Scenes." EMNLP 2014.
Yu, Licheng, et al. "Modeling Context in Referring Expressions." ECCV 2016.
```
## Setup
Run "make" before using the code.
It will generate ``_mask.c`` and ``_mask.so`` in ``external/`` folder.
These mask-related codes are copied from mscoco [API](https://github.com/pdollar/coco).
## Download
Download the cleaned data and extract them into "data" folder
- 1) http://bvisionweb1.cs.unc.edu/licheng/referit/data/refclef.zip
- 2) http://bvisionweb1.cs.unc.edu/licheng/referit/data/refcoco.zip
- 3) http://bvisionweb1.cs.unc.edu/licheng/referit/data/refcoco+.zip
- 4) http://bvisionweb1.cs.unc.edu/licheng/referit/data/refcocog.zip
## Prepare Images:
Besides, add "mscoco" into the ``data/images`` folder, which can be from [mscoco](http://mscoco.org/dataset/#overview)
COCO's images are used for RefCOCO, RefCOCO+ and refCOCOg.
For RefCLEF, please add ``saiapr_tc-12`` into ``data/images`` folder. We extracted the related 19997 images to the cleaned RefCLEF dataset, which is a subset of the original [imageCLEF](http://imageclef.org/SIAPRdata). Download the [subset](http://bvisionweb1.cs.unc.edu/licheng/referit/data/images/saiapr_tc-12.zip) and unzip it to ``data/images/saiapr_tc-12``.
## How to use
The "refer.py" is able to load all 4 datasets with different kinds of data split by UNC, Google, UMD and UC Berkeley.
**Note for RefCOCOg, we suggest use UMD's split which has train/val/test splits and there is no overlap of images between different split.**
```bash
# locate your own data_root, and choose the dataset_splitBy you want to use
refer = REFER(data_root, dataset='refclef', splitBy='unc')
refer = REFER(data_root, dataset='refclef', splitBy='berkeley') # 2 train and 1 test images missed
refer = REFER(data_root, dataset='refcoco', splitBy='unc')
refer = REFER(data_root, dataset='refcoco', splitBy='google')
refer = REFER(data_root, dataset='refcoco+', splitBy='unc')
refer = REFER(data_root, dataset='refcocog', splitBy='google') # test split not released yet
refer = REFER(data_root, dataset='refcocog', splitBy='umd') # Recommended, including train/val/test
```
<!-- refs(dataset).p contains list of refs, where each ref is
{ref_id, ann_id, category_id, file_name, image_id, sent_ids, sentences}
ignore filename
Each sentences is a list of sent
{arw, sent, sent_id, tokens}
-->