SoccerNet SDK
Project description
SOCCERNETV2
conda create -n SoccerNet python pip
pip install SoccerNet
Structure of the data data for each game
- SoccerNet main folder
- Leagues (england_epl/europe_uefa-champions-league/france_ligue-1/...)
- Seasons (2014-2015/2015-2016/2016-2017)
- Games (format: "{Date} - {Time} - {HomeTeam} {Score} {AwayTeam}")
-
SoccerNet-v2 - Labels / Manual Annotations
- video.ini: information on start/duration for each half of the game in the HQ video, in second
- Labels-v2.json: Labels from SoccerNet-v2 - action spotting
- Labels-cameras.json: Labels from SoccerNet-v1 - camera shot segmentation
-
SoccerNet-v2 - Videos / Automatically Extracted Features
- 1_HQ.mkv: HQ video 1st half
- 2_HQ.mkv: HQ video 2nd half
- 1.mkv: LQ video 1st half - timmed with start/duration from HQ video - resolution 224*398 - 25 fps
- 2.mkv: LQ video 2nd half - timmed with start/duration from HQ video - resolution 224*398 - 25 fps
- 1_ResNET_TF2.npy: ResNET features @2fps for 1st half from SoccerNet-v2, extracted using TF2
- 2_ResNET_TF2.npy: ResNET features @2fps for 2nd half from SoccerNet-v2, extracted using TF2
- 1_ResNET_TF2_PCA512.npy: ResNET features @2fps for 1st half from SoccerNet-v2, extracted using TF2, with dimensionality reduced to 512 using PCA
- 2_ResNET_TF2_PCA512.npy: ResNET features @2fps for 2nd half from SoccerNet-v2, extracted using TF2, with dimensionality reduced to 512 using PCA
- 1_ResNET_5fps_TF2.npy: ResNET features @5fps for 1st half from SoccerNet-v2, extracted using TF2
- 2_ResNET_5fps_TF2.npy: ResNET features @5fps for 2nd half from SoccerNet-v2, extracted using TF2
- 1_ResNET_5fps_TF2_PCA512.npy: ResNET features @5fps for 1st half from SoccerNet-v2, extracted using TF2, with dimensionality reduced to 512 using PCA
- 2_ResNET_5fps_TF2_PCA512.npy: ResNET features @5fps for 2nd half from SoccerNet-v2, extracted using TF2, with dimensionality reduced to 512 using PCA
- 1_ResNET_25fps_TF2.npy: ResNET features @25fps for 1st half from SoccerNet-v2, extracted using TF2
- 2_ResNET_25fps_TF2.npy: ResNET features @25fps for 2nd half from SoccerNet-v2, extracted using TF2
- 1_player_boundingbox_maskrcnn.json: Player Bounding Boxes @2fps for 1st half, extracted with MaskRCNN
- 2_player_boundingbox_maskrcnn.json: Player Bounding Boxes @2fps for 2nd half, extracted with MaskRCNN
- 1_field_calib_ccbv.json: Field Camera Calibration @2fps for 1st half, extracted with CCBV
- 2_field_calib_ccbv.json: Field Camera Calibration @2fps for 2nd half, extracted with CCBV
- 1_baidu_soccer_embeddings.npy: Frame Embeddings for 1st half from https://github.com/baidu-research/vidpress-sports
- 2_baidu_soccer_embeddings.npy: Frame Embeddings for 2nd half from https://github.com/baidu-research/vidpress-sports
-
Legacy from SoccerNet-v1
- Labels.json: Labels from SoccerNet-v1 - action spotting for goals/cards/subs only
- 1_C3D.npy: C3D features @2fps for 1st half from SoccerNet-v1
- 2_C3D.npy: C3D features @2fps for 2nd half from SoccerNet-v1
- 1_C3D_PCA512.npy: C3D features @2fps for 1st half from SoccerNet-v1, with dimensionality reduced to 512 using PCA
- 2_C3D_PCA512.npy: C3D features @2fps for 2nd half from SoccerNet-v1, with dimensionality reduced to 512 using PCA
- 1_I3D.npy: I3D features @2fps for 1st half from SoccerNet-v1
- 2_I3D.npy: I3D features @2fps for 2nd half from SoccerNet-v1
- 1_I3D_PCA512.npy: I3D features @2fps for 1st half from SoccerNet-v1, with dimensionality reduced to 512 using PCA
- 2_I3D_PCA512.npy: I3D features @2fps for 2nd half from SoccerNet-v1, with dimensionality reduced to 512 using PCA
- 1_ResNET.npy: ResNET features @2fps for 1st half from SoccerNet-v1
- 2_ResNET.npy: ResNET features @2fps for 2nd half from SoccerNet-v1
- 1_ResNET_PCA512.npy: ResNET features @2fps for 1st half from SoccerNet-v1, with dimensionality reduced to 512 using PCA
- 2_ResNET_PCA512.npy: ResNET features @2fps for 2nd half from SoccerNet-v1, with dimensionality reduced to 512 using PCA
-
- Games (format: "{Date} - {Time} - {HomeTeam} {Score} {AwayTeam}")
- Seasons (2014-2015/2015-2016/2016-2017)
- Leagues (england_epl/europe_uefa-champions-league/france_ligue-1/...)
How to Download Games (Python)
from SoccerNet.Downloader import SoccerNetDownloader
mySoccerNetDownloader = SoccerNetDownloader(LocalDirectory="path/to/soccernet")
# Download SoccerNet labels
mySoccerNetDownloader.downloadGames(files=["Labels.json"], split=["train","valid","test"]) # download labels
mySoccerNetDownloader.downloadGames(files=["Labels-v2.json"], split=["train","valid","test"]) # download labels SN v2
mySoccerNetDownloader.downloadGames(files=["Labels-cameras.json"], split=["train","valid","test"]) # download labels for camera shot
# Download SoccerNet features
mySoccerNetDownloader.downloadGames(files=["1_ResNET_TF2.npy", "2_ResNET_TF2.npy"], split=["train","valid","test"]) # download Features
mySoccerNetDownloader.downloadGames(files=["1_ResNET_TF2_PCA512.npy", "2_ResNET_TF2_PCA512.npy"], split=["train","valid","test"]) # download Features reduced with PCA
mySoccerNetDownloader.downloadGames(files=["1_player_boundingbox_maskrcnn.json", "2_player_boundingbox_maskrcnn.json"], split=["train","valid","test"]) # download Player Bounding Boxes inferred with MaskRCNN
mySoccerNetDownloader.downloadGames(files=["1_field_calib_ccbv.json", "2_field_calib_ccbv.json"], split=["train","valid","test"]) # download Field Calibration inferred with CCBV
mySoccerNetDownloader.downloadGames(files=["1_baidu_soccer_embeddings.npy","2_baidu_soccer_embeddings.npy"], split=["train","valid","test"]) # download Frame Embeddings from https://github.com/baidu-research/vidpress-sports
# Download SoccerNet videos (require password from NDA to download videos)
mySoccerNetDownloader.password = input("Password for videos? (contact the author):\n")
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
# Download SoccerNet Challenge set (require password from NDA to download videos)
mySoccerNetDownloader.downloadGames(files=["1_ResNET_TF2.npy", "2_ResNET_TF2.npy"], split=["challenge"]) # download ResNET Features
mySoccerNetDownloader.downloadGames(files=["1_ResNET_TF2_PCA512.npy", "2_ResNET_TF2_PCA512.npy"], split=["challenge"]) # download ResNET Features reduced with PCA
mySoccerNetDownloader.downloadGames(files=["1.mkv", "2.mkv", "video.ini"], split=["challenge"]) # download LQ Videos (require password from NDA)
mySoccerNetDownloader.downloadGames(files=["1_HQ.mkv", "2_HQ.mkv", "video.ini"], split=["challenge"]) # download HQ Videos (require password from NDA)
mySoccerNetDownloader.downloadGames(files=["1_player_boundingbox_maskrcnn.json", "2_player_boundingbox_maskrcnn.json"], split=["challenge"]) # download Player Bounding Boxes inferred with MaskRCNN
mySoccerNetDownloader.downloadGames(files=["1_field_calib_ccbv.json", "2_field_calib_ccbv.json"], split=["challenge"]) # download Field Calibration inferred with CCBV
mySoccerNetDownloader.downloadGames(files=["1_baidu_soccer_embeddings.npy","2_baidu_soccer_embeddings.npy"], split=["challenge"]) # download Frame Embeddings from https://github.com/baidu-research/vidpress-sports
How to read the list Games (Python)
from SoccerNet.utils 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="challenge")) # return list of games recommended for challenge
print(getListGames(split=["train", "valid", "test", "challenge"])) # return list of games for training, validation and testing
print(getListGames(split="v1")) # return list of games from SoccerNetv1 (train/valid/test)
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-0.1.18.tar.gz
(40.3 kB
view details)
Built Distribution
Filter files by name, interpreter, ABI, and platform.
If you're not sure about the file name format, learn more about wheel file names.
Copy a direct link to the current filters
File details
Details for the file SoccerNet-0.1.18.tar.gz.
File metadata
- Download URL: SoccerNet-0.1.18.tar.gz
- Upload date:
- Size: 40.3 kB
- Tags: Source
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/3.7.1 importlib_metadata/4.10.0 pkginfo/1.8.2 requests/2.27.1 requests-toolbelt/0.9.1 tqdm/4.62.3 CPython/3.9.7
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
6d768514f7225baa300e616019d1050c7126f630cc92df1bb35af914b3f1c9af
|
|
| MD5 |
59881cf9d8ed42677a8d4199db0b0c10
|
|
| BLAKE2b-256 |
2a65e4298b4ff122d2f81abecd20f329247b87895d7e204497f208951c9883a8
|
File details
Details for the file SoccerNet-0.1.18-py2.py3-none-any.whl.
File metadata
- Download URL: SoccerNet-0.1.18-py2.py3-none-any.whl
- Upload date:
- Size: 50.7 kB
- Tags: Python 2, Python 3
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/3.7.1 importlib_metadata/4.10.0 pkginfo/1.8.2 requests/2.27.1 requests-toolbelt/0.9.1 tqdm/4.62.3 CPython/3.9.7
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
6707001f156eae497929445ec554674aad260f4522a21a8a1c7fc34d92ae065d
|
|
| MD5 |
379700ee4f2351afd531c86a1f34f4db
|
|
| BLAKE2b-256 |
01fb4fe8aaf2f2914d3c3d5b43efb4ca53b497318df665c2b0bc0ff08ab91cbd
|