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This repository contains the author's implementation in PyTorch for the paper "Adaptive Label-aware Graph Convolutional Networks for Cross-Modal Retrieval".

Python 100.00%
graph-convolutional-networks pytorch cross-modal-retrieval

algcn's Introduction

Adaptive Label-aware Graph Convolutional Networks

This repository contains the author's implementation in PyTorch for the paper "Adaptive Label-aware Graph Convolutional Networks for Cross-Modal Retrieval".

Dependencies

  • Python (>=3.7)

  • PyTorch (>=1.2.0)

  • Scipy (>=1.3.2)

Datasets

You can download the features of the datasets from:

  • MIRFlickr,
  • NUS-WIDE(top-21 concepts)

Implementation

Here we provide the implementation of ALGCN, along with datasets. The repository is organised as follows:

  • data/ contains the necessary dataset files for NUS-WIDE and MIRFlickr;
  • models.py contains the implementation of the ALGCN;

Finally, main.py puts all of the above together and can be used to execute a full training run on MIRFlcikr or NUS-WIDE.

Process

  • Place the datasets in data/
  • Change the dataset in main.py to mirflickr or NUS-WIDE-TC21.
  • Train a model:
python main.py
  • Modify the parameter EVAL = True in main.py for evaluation:
python main.py

Citation

If you find our work or the code useful, please consider cite our paper using:

@article{qian2021adaptive,
  title={Adaptive Label-aware Graph Convolutional Networks for Cross-Modal Retrieval},
  author={Qian, Shengsheng and Xue, Dizhan and Fang, Quan and Xu, Changsheng},
  journal={IEEE Transactions on Multimedia},
  year={2021},
  publisher={IEEE},
  pages={1-1},
  doi={10.1109/TMM.2021.3101642}
}

algcn's People

Contributors

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Stargazers

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algcn's Issues

adj.mat

你好!,我看文件里面缺少adj的生成这一块,能否补充一下呢?感谢。

datasets

你好,能否提供一下您使用的数据集呢?如果全部数据不方便提供的话能否提供一下生成adj.mat文件的代码呢?

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