Skip to content
/ tampar Public

Code of our WACV '24 paper "TAMPAR: Visual Tampering Detection for Parcel Logistics in Postal Supply Chains".

License

Notifications You must be signed in to change notification settings

a-nau/tampar

Repository files navigation

arxiv project page CI

TAMPAR

This repo was developed as part of our WACV '24 paper "TAMPAR: Visual Tampering Detection for Parcels Logistics in Postal Supply Chains" (citation), also check the project page for more details.

Overview
Figure: We detect tampering by comparing the full parcel texture from a database (a) with the viewpoint-invariant parcel side surfaces of a single image by exploiting parcel corner point predictions (b). Appearance change detection is performed for each pair of matching parcel side surfaces to identify tampering (c). © IEEE 2024.

Usage

Setup

We highly recommend to use the provided Devcontainer to make the usage as easy as possible:

  • Install Docker and VS Code
  • Install VS Code Devcontainer extension ms-vscode-remote.remote-containers
  • Clone the repository
    git clone https://github.com/a-nau/tampar.git
  • Press F1 (or CTRL + SHIFT + P) and select Dev Containers: Rebuild and Reopen Container
  • Go to Run and Debug (CTRL + SHIFT + D) and press the run button, alternatively press F5

Afterwards

  • Download the pre-trained SimSaC weights from here and paste them into src/simsac/weight
  • Download the pre-trained keypoint detection weights from here

Keypoint Detection

To run a training on our 5 example images run:

python src/tools/train_maskrcnn.py --config-file ./src/maskrcnn/configs/test.yaml --gpus "0" --num-gpus 1 --num-machines 1

Predict Tampering

We first need to compute all relevant similarity scores

python src/tools/compute_similarity_scores.py

Afterwards, we can train the decision tree and predict tampering using

python src/tools/predict_tampering.py

Note: This will run only on the sample data from data/tampar_sample/.

TAMPAR dataset

You can download the dataset from Zenodo.

Overview
Figure: Visual samples from TAMPAR. Check our project website for more.

Citation

If you use the code of our paper for scientific research, please consider citing

@inproceedings{naumannTAMPAR2024,
    author    = {Naumann, Alexander and Hertlein, Felix and D\"orr, Laura and Furmans, Kai},
    title     = {TAMPAR: Visual Tampering Detection for Parcels Logistics in Postal Supply Chains},
    booktitle = {Proceedings of the IEEE/CVF Winter Conference on Applications of Computer Vision},
    month     = {January},
    year      = {2024},
    note      = {to appear in}
}

Affiliations

FZI Logo

Credits

Unless otherwise stated, this repo is distributed under MIT License.

About

Code of our WACV '24 paper "TAMPAR: Visual Tampering Detection for Parcel Logistics in Postal Supply Chains".

Topics

Resources

License

Stars

Watchers

Forks