SoccerNet SDK
Project description
SOCCERNETV2
conda create -n SoccerNet python pip
pip install SoccerNet
How to Download Games (Python)
from SoccerNet import SoccerNetDownloader
mySoccerNetDownloader = SoccerNetDownloader(
LocalDirectory="/path/to/soccernet/folder")
# input password to download video (copyright protected)
password = input("Password for videos? (contact the author):\n")
mySoccerNetDownloader.password = password
# Download SoccerNet v1
mySoccerNetDownloader.downloadGames(files=["Labels.json"], split=["train","valid","test"]) # download labels
mySoccerNetDownloader.downloadGames(files=["1.mkv", "2.mkv"], split=["train","valid","test"]) # download LQ Videos
mySoccerNetDownloader.downloadGames(files=["1_HQ.mkv", "2_HQ.mkv", "video.ini"], split=["train","valid","test"]) # download HQ Videos
mySoccerNetDownloader.downloadGames(files=["1_ResNET_TF2.npy", "2_ResNET_TF2.npy"], split=["train","valid","test"]) # download Features
# Download SoccerNet Test Set
mySoccerNetDownloader.LocalDirectory = "/path/to/soccernet/challenge/folder"
mySoccerNetDownloader.downloadGames(files=["1.mkv", "2.mkv"], split=["challenge"]) # download LQ Videos
mySoccerNetDownloader.downloadGames(files=["1_HQ.mkv", "2_HQ.mkv", "video.ini"], split=["challenge"]) # download HQ Videos
mySoccerNetDownloader.downloadGames(files=["1_ResNET_TF2.npy", "2_ResNET_TF2.npy"], split=["challenge"]) # download Features
How to read the list Games (Python)
from SoccerNet import getListGames
print(getListGames(split="train")) # return list of games recommended for training
print(getListGames(split="valid")) # return list of games recommended for validation
print(getListGames(split="test")) # return list of games recommended for testing
print(getListGames(split=["train", "valid", "test"])) # return list of games for training, validation and testing
print(getListGames(split="v1")) # return list of games from SoccerNetv1 (train/valid/test)
print(getListGames(split="challenge")) # return list of games for the challenge
print(getListGames(split=["v1", "challenge"])) # return complete list of games
[Coming soon...] How to extract features (TensorFlow 2)
Tensorflow
conda install cudnn cudatoolkit=10.1
pip install scikit-video tensorflow imutils opencv-python==3.4.11.41
Pytorch
conda install pytorch torchvision cudatoolkit=10.1 cudnn -c pytorch
pip install av
Python
from SoccerNet import FeatureExtractor
myFeatureExtractor = FeatureExtractor(
args.soccernet_dirpath, feature="ResNet", video="LQ", back_end="TF2")
myFeatureExtractor.extractGameIndex(0)
[Coming soon...] Tensorflow/Pytorch dataloader
pip install scikit-video
# pip cudnn cudatoolkit=10.1
pip install tensorflow
pip install pytorch torchvision cudatoolkit=10.1
pip install av
# conda install pytorch torchvision cudatoolkit=10.1 -c pytorch
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
SoccerNet-0.0.46.tar.gz
(18.7 kB
view hashes)
Built Distribution
Close
Hashes for SoccerNet-0.0.46-py2.py3-none-any.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | edd4f2a97d684619ebeb5164b1dcd6483f31c5a0c3ba0350817d6783dd101177 |
|
MD5 | e1fa7ad19fd0a9374c60085e871cb106 |
|
BLAKE2b-256 | 08bbfdd0b990e1bcca5271104cae759828d8bbc9589790bb0e013d146d952f1b |