The code for the paper Rethinking Knowledge Graph Propagation for Zero-Shot Learning.
@inproceedings{kampffmeyer2019rethinking,
title={Rethinking knowledge graph propagation for zero-shot learning},
author={Kampffmeyer, Michael and Chen, Yinbo and Liang, Xiaodan and Wang, Hao and Zhang, Yujia and Xing, Eric P},
booktitle={Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition},
pages={11487--11496},
year={2019}
}
There is a folder materials/
, which contains some meta data and programs already.
glove.6B.300d.txt
to materials/
.cd materials/
python make_induced_graph.py
, get imagenet-induced-graph.json
python make_dense_graph.py
, get imagenet-dense-graph.json
python make_dense_grouped_graph.py
, get imagenet-dense-grouped-graph.json
materials/resnet50-raw.pth
cd materials/
, run python process_resnet.py
, get fc-weights.json
and resnet50-base.pth
Download ImageNet and AwA2, create the softlinks (command ln -s
): materials/datasets/imagenet
and materials/datasets/awa2
, to the root directory of the dataset.
An ImageNet root directory should contain image folders, each folder with the wordnet id of the class.
An AwA2 root directory should contain the folder JPEGImages.
Make a directory save/
for saving models.
In most programs, use --gpu
to specify the devices to run the code (default: use gpu 0).
python train_gcn_basic.py
, get results in save/gcn-basic
python train_gcn_dense_att.py
, get results in save/gcn-dense-att
In the results folder:
*.pth
is the state dict of Graph Networks model*.pred
is the prediction file, which can be loaded by torch.load()
. It is a python dict, having two keys: wnids
- the wordnet ids of the predicted classes, pred
- the predicted fc weightsRun python train_resnet_fit.py
with the args:
--pred
: the .pred
file for finetuning--train-dir
: the directory contains 1K imagenet training classes, each class with a folder named by its wordnet id--save-path
: the folder you want to save the result, e.g. save/resnet-fit-xxx
(In the paper's setting, --train-dir is the folder composed of 1K classes from fall2011.tar, with the missing class "teddy bear" from ILSVRC2012.)
Run python evaluate_imagenet.py
with the args:
--cnn
: path to resnet50 weights, e.g. materials/resnet50-base.pth
or save/resnet-fit-xxx/x.pth
--pred
: the .pred
file for testing--test-set
: load test set in materials/imagenet-testsets.json
, choices: [2-hops, 3-hops, all]
--keep-ratio
for the ratio of testing data, --consider-trains
to include training classes' classifiers, --test-train
for testing with train classes images only.Run python evaluate_awa2.py
with the args:
--cnn
: path to resnet50 weights, e.g. materials/resnet50-base.pth
or save/resnet-fit-xxx/x.pth
--pred
: the .pred
file for testing--consider-trains
to include training classes' classifiers