Unofficial implementation of Google "CutPaste: Self-Supervised Learning for Anomaly Detection and Localization" in PyTorch

Overview

CutPaste

CutPaste: image from paper CutPaste: image from paper

Unofficial implementation of Google's "CutPaste: Self-Supervised Learning for Anomaly Detection and Localization" in PyTorch

Installation

To rerun experiments or try on your own dataset, first clone the repository and install requirements.txt.

$ git clone https://github.com/LilitYolyan/CutPaste.git
$ cd CutPaste
$ pip install -r requirements.txt

Self-supervised training

Run train.py to train self-supervised model on MVTec dataset

For 3 way classification head

$ python train.py --dataset_path path/to/your/dataset/ --num_class 3

For binary classification head

$ python train.py --dataset_path path/to/your/dataset/ --num_class 2

To track training process with TensorBoard

tensorboard --logdir logdirs

Anomaly Detection

To run anomaly detection for MVTec with Gaussian Density Estimator

$ python anomaly_detection.py --checkpoint path/to/your/weights --data path/to/mvtec

TODO

  • Self-supervised model
  • Gaussian Density Estimator
  • EfficientNet Implementation
  • Localization

Any contribution is appreciated!

Owner
Lilit Yolyan
AI Enthusiast, PhD student, Computer Vision Specialist
Lilit Yolyan
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