Skip to content

edn314/Anomaly-Detection-PatchSVDD-PyTorch

 
 

Repository files navigation

Patch SVDD

Patch SVDD for Image anomaly detection. Paper: https://arxiv.org/abs/2006.16067 (published in ACCV 2020).

An input image and a generated anomaly map for 'wood' class.

wood

Compatibility

The code runs on python 3.7, pytorch 1.3.1, and torchvision 0.4.2.

Installation

Step 1. Install libraries.

Step 2. Download MVTec AD dataset.

  • Download MVTec AD dataset: Download
  • Untar the 'mvtec_anomaly_detection.tar.xz' file.

Code examples

Step 1. Set the DATASET_PATH variable.

Set the DATASET_PATH to the root path of the downloaded MVTec AD dataset.

Step 2. Train Patch SVDD.

python main_train.py --obj=bottle --lr=1e-4 --lambda_value=1e-3 --D=64
  • obj denotes the name of the class out of 15 MVTec AD classes.
  • lr denotes the learning rate of Adam optimizer.
  • lambda_value denotes the value of 'lambda' in Eq. 6 of the paper.
  • D denotes the number of embedding dimension (default to 64).

Step 3. Evaluate the trained encoder.

python main_evaluate.py --obj=bottle
  • obj denotes the name of the class.

The script loads the trained encoder saved in ckpts/ directory. Note that the same evaluation procedure is performed at every training epoch in Step 2.

For a quick evaluation, trained encoders for cable and wood classes are included. Training (Step 2) can be skipped for those classes.

Step 4. Obtain anomaly maps.

python main_visualize.py --obj=bottle
  • obj denotes the name of the class.

The script generates and saves anomaly maps for all the test images in the obj class. The genereated maps are saved in anomaly_maps/obj directory.

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 100.0%