Skip to content

yassersouri/NeuralNetwork-Viterbi

 
 

Repository files navigation

NeuralNetwork-Viterbi: A Framework for Weakly Supervised Video Learning

Code for the paper NeuralNetwork-Viterbi: A Framework for Weakly Supervised Video Learning

Prepraration:

  • download the data from https://uni-bonn.sciebo.de/s/vVexqxzKFc6lYJx
  • extract it so that you have the data folder in the same directory as train.py
  • create a results directory in the same directory where you also find train.py: mkdir results

The data for 50Salads is also available online: https://uni-bonn.sciebo.de/s/MUdKRA3xLhrW2ZE

Requirements: Python3.x with the libraries numpy and pytorch (version 0.4.1)

Training:

Run python3 train.py

Inference:

Run python3 infernece.py Note: adjust the variable n_threads in inference.py to your needs.

Evaluation:

In the inference step, recognition files are written to the results directory. The frame-level ground truth is available in data/groundTruth. Run python eval.py --recog_dir=results --ground_truth_dir=data/groundTruth to evaluate the frame accuracy of the trained model.

Remarks:

We provide a python/pytorch implementation for easy usage. In the paper, we used a faster in-house C++ implementation, so results can be slightly different. Running the provided setup on split1 of Breakfast should lead to roughly 42% frame accuracy.

If you use the code, please cite

A. Richard, H. Kuehne, A. Iqbal, J. Gall:
NeuralNetwork-Viterbi: A Framework for Weakly Supervised Video Learning
in IEEE Int. Conf. on Computer Vision and Pattern Recognition, 2018

About

No description, website, or topics provided.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 90.7%
  • Shell 7.0%
  • q 2.3%