Play and Rewind: Optimizing Binary Representations of Videos by Self-Supervised Temporal Hashing (oral)
Hanwang Zhang, Meng Wang, Richang Hong, Tat-Seng Chua. ACM MM 2016
@InProceedings{zhang2016play,
title = {Play and Rewind: Optimizing Binary Representations of Videos by Self-Supervised Temporal Hashing},
author = {Zhang, Hanwang and Wang, Meng and Hong, Richang and Chua, Tat-Seng},
booktitle = {MM},
year = {2016},
}
An unsupervised hashing model that generates binary codes (+1,-1) for a video sequence. This is just a quick demo for running the training and test. The source code is simple and well commented. Future details about feature extraction and visualization will be added ASAP.
Only [Theano] (http://deeplearning.net/software/theano/) is required. In fact, some of the core layers exploit a high-level wrapper [Keras] (https://keras.io/), but the code is not dependent on Keras installation. You may need to install h5py for data loader.
>> run Blstm.py;