DeepHash is a lightweight deep learning to hash library that implements state-of-the-art deep hashing/quantization algorithms. We will implement more representative deep hashing models continuously according to our released deep hashing paper list. Specifically, we welcome other researchers to contribute deep hashing models into this toolkit based on our framework. We will announce the contribution in this project.
The implemented models include:
- DQN: Deep Quantization Network for Efficient Image Retrieval, Yue Cao, Mingsheng Long, Jianmin Wang, Han Zhu, Qingfu Wen, AAAI Conference on Artificial Intelligence (AAAI), 2016
- DHN: Deep Hashing Network for Efficient Similarity Retrieval, Han Zhu, Mingsheng Long, Jianmin Wang, Yue Cao, AAAI Conference on Artificial Intelligence (AAAI), 2016
- DVSQ: Deep Visual-Semantic Quantization for Efficient Image Retrieval, Yue Cao, Mingsheng Long, Jianmin Wang, Shichen Liu, IEEE Conference on Computer Vision and Pattern Recognition (CVPR), 2017
- DCH: Deep Cauchy Hashing for Hamming Space Retrieval, Yue Cao, Mingsheng Long, Bin Liu, Jianmin Wang, IEEE Conference on Computer Vision and Pattern Recognition (CVPR), 2018
- Python3
- Other packages:
pip install tensorflow-gpu scipy h5py
To import the algorithms implemented in ./DeepHash
, we need to add the path of ./DeepHash
to environment variables as:
export PYTHONPATH=/path/to/project/DeepHash/DeepHash:$PYTHONPATH
In data/cifar10/train.txt
, we give an example to show how to prepare image training data. In data/cifar10/test.txt
and data/cifar10/database.txt
, the list of testing and database images could be processed during predicting procedure. If you want to add other datasets as the input, you need to prepare train.txt
, test.txt
and database.txt
as CIFAR-10 dataset.
You should manually download the model file of the Imagenet pre-tained AlexNet from here or from release page and unzip it to /path/to/project/DeepHash/architecture/pretrained_model
.
Make sure the tree of /path/to/project/DeepHash/architecture
looks like this:
├── __init__.py
├── pretrained_model
└── reference_pretrain.npy
The example of $method
(DCH, DVSQ, DQN and DHN) can be run with the following command:
cd example/$method/
python train_val_script.py --gpus "0,1" --"other parameters descirbe in train_val_script.py"
If you find DeepHash is useful for your research, please consider citing the following papers:
@InProceedings{cite:AAAI16DQN,
Author = {Yue Cao and Mingsheng Long and Jianmin Wang and Han Zhu and Qingfu Wen},
Publisher = {AAAI},
Title = {Deep Quantization Network for Efficient Image Retrieval},
Year = {2016}
}
@InProceedings{cite:AAAI16DHN,
Author = {Han Zhu and Mingsheng Long and Jianmin Wang and Yue Cao},
Publisher = {AAAI},
Title = {Deep Hashing Network for Efficient Similarity Retrieval},
Year = {2016}
}
@InProceedings{cite:CVPR17DVSQ,
Title={Deep visual-semantic quantization for efficient image retrieval},
Author={Cao, Yue and Long, Mingsheng and Wang, Jianmin and Liu, Shichen},
Booktitle={CVPR},
Year={2017}
}
@InProceedings{cite:CVPR18DCH,
Title={Deep Cauchy Hashing for Hamming Space Retrieval},
Author={Cao, Yue and Long, Mingsheng and Bin, Liu and Wang, Jianmin},
Booktitle={CVPR},
Year={2018}
}
Maintainers of this library:
- Yue Cao, Email: [email protected]
- Bin Liu, Email: [email protected]