Skip to content

endtheme123/AnomalyInnovativeLab

Repository files navigation

Variational Autoencoder with Gaussian Random Field prior

Repository linked with the publication

Variational Autoencoder with Gaussian Random Field prior: application to unsupervised animal detection in aerial images, H. Gangloff, M.-T. Pham, L. Courtrai, S. Lefèvre, 2022. (https://hal.archives-ouvertes.fr/view/index/docid/3774853)

The model can be directly tested on the Livestock dataset which is provided to reproduce the results from this section of the article.

To train a model run the file: sh vae_train.sh. For the classical VAE model, set corr_type=corr_id, for the VAE-GRF model set corr_type=corr_exp or corr_type=corr_m32. Dataset available is livestock for now.

To test a model run the file: sh vae_test.sh with appropriate parameters. Some checkpoints files are provided in torch_checkpoints to reproduce directly the results from the article.

The code is built with PyTorch and other standard librairies.

For more details, refer to the publication.

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published