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Source code of paper "[NIPS2017] Deep Learning for Precipitation Nowcasting: A Benchmark and A New Model"

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Source code of the paper Deep learning for precipitation nowcasting: A benchmark and a new model

If you use the code or find it helpful, please cite the following paper:

@inproceedings{xingjian2017deep,
    title={Deep learning for precipitation nowcasting: a benchmark and a new model},
    author={Shi, Xingjian and Gao, Zhihan and Lausen, Leonard and Wang, Hao and Yeung, Dit-Yan and Wong, Wai-kin and Woo, Wang-chun},
    booktitle={Advances in Neural Information Processing Systems},
    year={2017}
}

Installation

Requires Python 3.5 or newer!

Both Windows and Linux are supported.

Install the package

python3 setup.py develop
# Use --user if you have no privilege
python3 setup.py develop --user

You will also need the python plugin of opencv:

pip3 install opencv-contrib-python

In addition, you will need to install FFMpeg + X264 (See FAQ).

For windows users it may be difficult to install some required packages like numba, ffmpeg or opencv-python. We strongly recommend you to use Anaconda and install them by commands like conda install numba. To install opencv-python on windows, you can download the wheel file from https://www.lfd.uci.edu/~gohlke/pythonlibs/.

If you want to run the deep models in the paper, e.g., TrajGRU, you will need to install MXNet. We've tested our code under MXNet v0.12.0. Also, in order to run the ROVER algorithm, install the python wrapper of VarFlow by following the guide in VarFlow.

IMPORTANT! You are able to run the HKO-7 benchmark environment without MXNet or VarFlow. You can proceed to use the HKOIterator and HKOBenchmarkEnv after you have installed the python package + Opencv-Python + FFMpeg with X264 encoding enabled and have downloaded the data. (See sections below for more reference).

MovingMNIST++

Run the following script to draw a sample from the MovingMNIST++ dataset

python3 nowcasting/movingmnist_iterator.py

Also, you can view samples of the learned connection structure of different layers in the TrajGRU-L13 model:

  • For the encoder, lower-layers will capture lower-level motion features and higher layer will capture some more general motion features. We show one of the learned links for layer1, layer2 and layer3 (from left to right).

  • For the forecaster, higher-layers will generate more global movements and lower layer will generate motions with finer details. We show one of the learned links for layer3, layer2 and layer1 (from left to right).

Download the HKO-7 Dataset and Use the Iterator

Please note that our source code does not require HKO-7 Dataset to perform the computation.

The Hong Kong Observatory (HKO) may provide universities and research institutes the HKO-7 dataset (images + masks) for academic research subject to agreement to the undertaking (HKO-7_Dataset_Undertaking_fillable.pdf) by a faculty or formal member of the institute, e.g. professor, lecturer, researcher. Any interested person please review the terms and conditions on the undertaking and, if agreeable, fill in the form, sign it and send an email as follow:

Subject: Request for HKO-7 Dataset
----------------------------------
Name: YOUR NAME
Institution: YOUR INSTITUTION
Attachment: Completed and Signed Undertaking Form
Other Information:
    You can include other information if you want.

Preferred email address:(You can also contact anyone in our NIPS2017 paper)

The email must be sent from an official email address ending with the domain name of the institute. As we need to remotely establish the identiy of the data requester, we regret for not being able to process requests sent from general email services, e.g. Gmail, Yahoo, iCloud. If you have difficulty sending official emails, please explain in the email message body.

Interested undergraduate or post-graduate students please ask their supervisors for advice and instructions.

Please allow a few weeks for processing the data request.

After you've downloaded the datasets, extract and put the radarPNG or radarPNG_mask folders under the hko_data folder. To use your own path of radarPNG or radarPNG_mask, append your paths into the possible_hko_png_paths and possible_hko_mask_paths in https://github.com/sxjscience/HKO-7/blob/master/nowcasting/config.py.

possible_hko_png_paths = [os.path.join('E:\\datasets\\HKO-data\\radarPNG\\radarPNG'),
                          os.path.join(__C.HKO_DATA_BASE_PATH, 'radarPNG'),
                          YOUR_PNG_PATH]
possible_hko_mask_paths = [os.path.join('E:\\datasets\\HKO-data\\radarPNG\\radarPNG_mask'),
                           os.path.join(__C.HKO_DATA_BASE_PATH, 'radarPNG_mask'),
                           YOUR_MASK_PATH]

Also, download the necessary files via

python3 download_all.py
# You can also force to redownload the dataset:
python3 download_all.py --overwrite

You can then try to run the following script to test the FPS of hko iterator. Check whether all the mp4 files are generated successfully. If they are all empty, try to reinstall ffmpeg with x264 encoding enabled (See FAQ below).

python3 nowcasting/hko_iterator.py

You can use the iterator to sample a random minibatch of radar echo sequence. There is also the sequent setting and you can refer to the examples in the hko_iterator.py

from nowcasting.hko_iterator import HKOIterator
from nowcasting.config import cfg
from nowcasting.

train_hko_iter = HKOIterator(pd_path=cfg.HKO_PD.RAINY_TRAIN,
                             sample_mode="random",
                             seq_len=25)
sample_sequence, sample_mask, sample_datetime_clips, new_start =\
            train_hko_iter.sample(batch_size=8)

If you have not obtained the HKO-7 dataset and just want to run the TrajGRU model, you can comment out the lines in https://github.com/sxjscience/HKO-7/blob/master/nowcasting/config.py#L39-L41 and https://github.com/sxjscience/HKO-7/blob/master/nowcasting/config.py#L49-L51 and run the MovingMNIST++ experiments.

Run the HKO-7 Benchmark Environment

The general workflow of the benchmark environment is given in the following:

from nowcasting.config import cfg
model = INITIALIZE_YOUR_MODEL
mode = "fixed" # Can also be "online"
env = HKOBenchmarkEnv(pd_path=cfg.HKO_PD.RAINTY_TEST, mode=mode)
while not env.done:
    # Get the observation
    in_frame_dat, in_mask_dat, in_datetime_clips, out_datetime_clips, begin_new_episode, need_upload_prediction =\
     env.get_observation(batch_size=1)
    # You can update your model if you are using the online setting
    if mode == "online":
        # Just an example, need not to be exactly like this
        model.update(frames=in_frame_dat, masks=in_mask_dat)
        model.store(frames=in_frame_dat, masks=in_mask_dat)
    # Running your algorithm to get the prediction
    if need_upload_predictoin:
        prediction = model.predict(frames=in_frame_dat, masks=in_mask_dat)
        # Upload prediction to the environment
        env.upload_prediction(prediction)
# Save the evaluation result
env.save_eval()

You can refer to the CSI, HSS, B-MSE, B-MAE scores in the saved evaluation file to have an overall understanding of your performance.

Running Experiments in the Paper

Refer to the MovingMNIST++ Experiment README and HKO-7 Experiment README

FAQ

  1. Install FFMpeg with X264 encoding

    # Install libx264
    git clone git://git.videolan.org/x264.git
    cd x264
    ./configure --enable-static --enable-shared --enable-mp4 --prefix=YOUR_INSTALL_LOCATION --extra-ldflags="-lswresample -lm -lz -llzma"
    make -j64
    make install
    
    cd ..
    
    # Install ffmpeg
    git clone http://source.ffmpeg.org/git/ffmpeg.git
    cd ffmpeg
    ./configure --enable-gpl --enable-libx264 --prefix=YOUR_INSTALL_LOCATION
    make -j64
    make install

    Above commands were sufficient to install FFMpeg with X264 encoding on our servers. Please refer to the official guide https://trac.ffmpeg.org/wiki/CompilationGuide/Ubuntu in case of any issues.

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Source code of paper "[NIPS2017] Deep Learning for Precipitation Nowcasting: A Benchmark and A New Model"

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