# Preparing AVA ## Introduction ```BibTeX @inproceedings{gu2018ava, title={Ava: A video dataset of spatio-temporally localized atomic visual actions}, author={Gu, Chunhui and Sun, Chen and Ross, David A and Vondrick, Carl and Pantofaru, Caroline and Li, Yeqing and Vijayanarasimhan, Sudheendra and Toderici, George and Ricco, Susanna and Sukthankar, Rahul and others}, booktitle={Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition}, pages={6047--6056}, year={2018} } ``` For basic dataset information, please refer to the official [website](https://research.google.com/ava/index.html). Before we start, please make sure that the directory is located at `$MMACTION2/tools/data/ava/`. ## Step 1. Prepare Annotations First of all, you can run the following script to prepare annotations. ```shell bash download_annotations.sh ``` This command will download `ava_v2.1.zip` for AVA `v2.1` annotation. If you need the AVA `v2.2` annotation, you can try the following script. ```shell VERSION=2.2 bash download_annotations.sh ``` ## Step 2. Prepare Videos Then, use the following script to prepare videos. The codes are adapted from the [official crawler](https://github.com/cvdfoundation/ava-dataset). Note that this might take a long time. ```shell bash download_videos.sh ``` Or you can use the following command to downloading AVA videos in parallel using a python script. ```shell bash download_videos_parallel.sh ``` Note that if you happen to have sudoer or have [GNU parallel](https://www.gnu.org/software/parallel/) on your machine, you can speed up the procedure by downloading in parallel. ```shell # sudo apt-get install parallel bash download_videos_gnu_parallel.sh ``` ## Step 3. Cut Videos Cut each video from its 15th to 30th minute and make them at 30 fps. ```shell bash cut_videos.sh ``` ## Step 4. Extract RGB and Flow Before extracting, please refer to [install.md](/docs/en/install.md) for installing [denseflow](https://github.com/open-mmlab/denseflow). If you have plenty of SSD space, then we recommend extracting frames there for better I/O performance. And you can run the following script to soft link the extracted frames. ```shell # execute these two line (Assume the SSD is mounted at "/mnt/SSD/") mkdir /mnt/SSD/ava_extracted/ ln -s /mnt/SSD/ava_extracted/ ../data/ava/rawframes/ ``` If you only want to play with RGB frames (since extracting optical flow can be time-consuming), consider running the following script to extract **RGB-only** frames using denseflow. ```shell bash extract_rgb_frames.sh ``` If you didn't install denseflow, you can still extract RGB frames using ffmpeg by the following script. ```shell bash extract_rgb_frames_ffmpeg.sh ``` If both are required, run the following script to extract frames. ```shell bash extract_frames.sh ``` ## Step 5. Fetch Proposal Files The scripts are adapted from FAIR's [Long-Term Feature Banks](https://github.com/facebookresearch/video-long-term-feature-banks). Run the following scripts to fetch the pre-computed proposal list. ```shell bash fetch_ava_proposals.sh ``` ## Step 6. Folder Structure After the whole data pipeline for AVA preparation. you can get the rawframes (RGB + Flow), videos and annotation files for AVA. In the context of the whole project (for AVA only), the *minimal* folder structure will look like: (*minimal* means that some data are not necessary: for example, you may want to evaluate AVA using the original video format.) ``` mmaction2 ├── mmaction ├── tools ├── configs ├── data │ ├── ava │ │ ├── annotations │ │ | ├── ava_dense_proposals_train.FAIR.recall_93.9.pkl │ │ | ├── ava_dense_proposals_val.FAIR.recall_93.9.pkl │ │ | ├── ava_dense_proposals_test.FAIR.recall_93.9.pkl │ │ | ├── ava_train_v2.1.csv │ │ | ├── ava_val_v2.1.csv │ │ | ├── ava_train_excluded_timestamps_v2.1.csv │ │ | ├── ava_val_excluded_timestamps_v2.1.csv │ │ | ├── ava_action_list_v2.1_for_activitynet_2018.pbtxt │ │ ├── videos │ │ │ ├── 053oq2xB3oU.mkv │ │ │ ├── 0f39OWEqJ24.mp4 │ │ │ ├── ... │ │ ├── videos_15min │ │ │ ├── 053oq2xB3oU.mkv │ │ │ ├── 0f39OWEqJ24.mp4 │ │ │ ├── ... │ │ ├── rawframes │ │ │ ├── 053oq2xB3oU | │ │ │ ├── img_00001.jpg | │ │ │ ├── img_00002.jpg | │ │ │ ├── ... ``` For training and evaluating on AVA, please refer to \[getting_started\](/docs/en/getting_started.md). ## Reference 1. O. Tange (2018): GNU Parallel 2018, March 2018, https://doi.org/10.5281/zenodo.1146014