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Shape-Guided Dual-Memory Learning for 3D Anomaly Detection (ICML2023)

PWC PWC

Qualitative Results

Signed Distance Function(SDF) means the method we estimate the point cloud to detect anomaly. We utilize the information of the RGB and the corresponding 3D point cloud to detect anomaly and complement each other to get the final score map. image

Img-AUROC Results

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AU PRO Results

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Installation

Requirement

Linux (Ubuntu 16.04)
Python 3.6+
PyTorch 1.7 or higher
CUDA 10.2 or higher

create environment

git clone https://github.com/jayliu0313/Shape-Guided.git
cd Shape-Guided
conda create --name myenv python=3.6
conda activate myenv
pip install -r requirement.txt

MvTec3D-AD Dataset

Here to download dataset

Implementation

Preprocessing

It will take few minutes to remove the backgoround of the point cloud.

python tools/preprocessing.py DATASET_PATH

Divided the point cloud into multiple local patches for each instance.

python cut_patches.py --datasets_path DATASET_PATH --save_grid_path data/

Make sure the order of execution of preprocessing.py is before cut_patches.py.

Train 3D Expert Model

There is the best checkpoint of the 3D expert model in checkpoint/best_ckpt/ckpt_000601.pth, and you can skip this step. Alternatively, you can train the 3D expert model on your own. So, you need to execute the following commands to get the required training patches which are contained the noise points.
Recommend setting the save_grid_path in the same directory as above.

python cut_patches.py --datasets_path DATASET_PATH --save_grid_path data/ --pretrain

then,

python train_3Dmodel.py --grid_path data/ --ckpt_path "./checkpoint"

Buid Memory and Inference

The result will be stored in the output directory. You can use "--vis" to visualize our result of the heat map.

python main.py --datasets_path DATASET_PATH --grid_path data/ --ckpt_path "checkpoint/best_ckpt/ckpt_000601.pth"

Citation

If our paper is useful for your research, please cite our paper. Thank you!

@InProceedings{pmlr-v202-chu23b,
  title = {Shape-Guided Dual-Memory Learning for 3D Anomaly Detection},
  author = {Chu, Yu-Min and Liu, Chieh and Hsieh, Ting-I and Chen, Hwann-Tzong and Liu, Tyng-Luh},
  booktitle = {Proceedings of the 40th International Conference on Machine Learning},
  pages = {6185--6194},
  year = {2023},
}

Reference

Our memory architecture is refer to https://github.com/eliahuhorwitz/3D-ADS
3D expert model is modified from https://github.com/mabaorui/PredictableContextPrior