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Author: Akshay Bhat, Cornell University.
Deep Video Analytics is a platform for indexing and extracting information from videos and images. For installation instructions & demo go to https://www.deepvideoanalytics.com
Library | Link to the license |
---|---|
YAD2K | MIT License |
AdminLTE2 | MIT License |
FabricJS | MIT License |
Facenet | MIT License |
JSFeat | MIT License |
MTCNN | MIT License |
CRNN.pytorch | MIT License |
Original CRNN code by Baoguang Shi | MIT License |
Modified PySceneDetect | BSD 2-Clause |
Segment annotator | BSD 3-clause |
Modified SSD-Tensorflow | Apache 2.0 License (Individual files) |
LOPQ | Apache 2.0 License |
Open Images Pre-trained network | Apache 2.0 License |
- FFmpeg (not linked, called via a Subprocess)
- Tensorflow
- OpenCV
- Numpy
- Pytorch
- Docker
- Nvidia-docker
- Docker-compose
- All packages in requirements.txt & used in Dockerfiles.
Copyright 2016-2017, Akshay Bhat, Cornell University, All rights reserved.
Deep Video Analytics is currently in active development. The license will be relaxed once the a stable release version is reached. Please contact me for more information. For more information see answer on this issue