Official PyTorch code for WACV 2022 paper "CFLOW-AD: Real-Time Unsupervised Anomaly Detection with Localization via Conditional Normalizing Flows"

Overview

PWC

CFLOW-AD: Real-Time Unsupervised Anomaly Detection with Localization via Conditional Normalizing Flows

WACV 2022 preprint:https://arxiv.org/abs/2107.12571

Abstract

Unsupervised anomaly detection with localization has many practical applications when labeling is infeasible and, moreover, when anomaly examples are completely missing in the train data. While recently proposed models for such data setup achieve high accuracy metrics, their complexity is a limiting factor for real-time processing. In this paper, we propose a real-time model and analytically derive its relationship to prior methods. Our CFLOW-AD model is based on a conditional normalizing flow framework adopted for anomaly detection with localization. In particular, CFLOW-AD consists of a discriminatively pretrained encoder followed by a multi-scale generative decoders where the latter explicitly estimate likelihood of the encoded features. Our approach results in a computationally and memory-efficient model: CFLOW-AD is faster and smaller by a factor of 10x than prior state-of-the-art with the same input setting. Our experiments on the MVTec dataset show that CFLOW-AD outperforms previous methods by 0.36% AUROC in detection task, by 1.12% AUROC and 2.5% AUPRO in localization task, respectively. We open-source our code with fully reproducible experiments.

BibTex Citation

If you like our paper or code, please cite its WACV 2022 preprint using the following BibTex:

@article{cflow_ad,
  title={CFLOW-AD: Real-Time Unsupervised Anomaly Detection with Localization via Conditional Normalizing Flows},
  author={Gudovskiy, Denis and Ishizaka, Shun and Kozuka, Kazuki},
  journal={arXiv:2107.12571},
  year={2021}
}

Installation

Install all packages with this command:

$ python3 -m pip install -U -r requirements.txt

Datasets

We support MVTec AD dataset for anomaly localization in factory setting and Shanghai Tech Campus (STC) dataset with surveillance camera videos. Please, download dataset from URLs and extract to data folder or make symlink to that folder or change default data path in main.py).

Code Organization

  • ./custom_datasets - contains dataloaders for MVTec and STC
  • ./custom_models - contains pretrained feature extractors

Training Models

  • Run code by selecting class name, feature extractor, input size, flow model etc.
  • The commands below should reproduce our reference MVTec results using WideResnet-50 extractor:
python3 main.py --gpu 0 --pro -inp 512 --dataset mvtec --class-name bottle
python3 main.py --gpu 0 --pro -inp 256 --dataset mvtec --class-name cable
python3 main.py --gpu 0 --pro -inp 256 --dataset mvtec --class-name capsule
python3 main.py --gpu 0 --pro -inp 512 --dataset mvtec --class-name carpet
python3 main.py --gpu 0 --pro -inp 512 --dataset mvtec --class-name grid
python3 main.py --gpu 0 --pro -inp 256 --dataset mvtec --class-name hazelnut
python3 main.py --gpu 0 --pro -inp 512 --dataset mvtec --class-name leather
python3 main.py --gpu 0 --pro -inp 256 --dataset mvtec --class-name metal_nut
python3 main.py --gpu 0 --pro -inp 256 --dataset mvtec --class-name pill
python3 main.py --gpu 0 --pro -inp 512 --dataset mvtec --class-name screw
python3 main.py --gpu 0 --pro -inp 512 --dataset mvtec --class-name tile
python3 main.py --gpu 0 --pro -inp 512 --dataset mvtec --class-name toothbrush
python3 main.py --gpu 0 --pro -inp 128 --dataset mvtec --class-name transistor
python3 main.py --gpu 0 --pro -inp 512 --dataset mvtec --class-name wood
python3 main.py --gpu 0 --pro -inp 512 --dataset mvtec --class-name zipper

Testing Pretrained Models

  • Download pretrained weights from Google Drive
  • The command below should reproduce MVTec results using light-weight MobileNetV3L extractor (AUROC, AUPRO) = (98.38%, 94.72%):
python3 main.py --gpu 0 --pro -enc mobilenet_v3_large --dataset mvtec --action-type norm-test -inp INPUT --class-name CLASS --checkpoint PATH/FILE.PT

CFLOW-AD Architecture

CFLOW-AD

Reference CFLOW-AD Results for MVTec

CFLOW-AD

Owner
Denis
Machine and Deep Learning Researcher
Denis
Code of 3D Shape Variational Autoencoder Latent Disentanglement via Mini-Batch Feature Swapping for Bodies and Faces

3D Shape Variational Autoencoder Latent Disentanglement via Mini-Batch Feature Swapping for Bodies and Faces Installation After cloning the repo open

37 Dec 03, 2022
Groceries ARL: Association Rules (Birliktelik Kuralı)

Groceries_ARL Association Rules (Birliktelik Kuralı) Birliktelik kuralları, mark

Şebnem 5 Feb 08, 2022
The object detection pipeline is based on Ultralytics YOLOv5

AYOLOv2 The main goal of this repository is to rewrite the object detection pipeline with a better code structure for better portability and adaptabil

153 Dec 22, 2022
Evaluation toolkit of the informative tracking benchmark comprising 9 scenarios, 180 diverse videos, and new challenges.

Informative-tracking-benchmark Informative tracking benchmark (ITB) higher diversity. It contains 9 representative scenarios and 180 diverse videos. m

Xin Li 15 Nov 26, 2022
A standard framework for modelling Deep Learning Models for tabular data

PyTorch Tabular aims to make Deep Learning with Tabular data easy and accessible to real-world cases and research alike.

801 Jan 08, 2023
Source code of our TTH paper: Targeted Trojan-Horse Attacks on Language-based Image Retrieval.

Targeted Trojan-Horse Attacks on Language-based Image Retrieval Source code of our TTH paper: Targeted Trojan-Horse Attacks on Language-based Image Re

fine 7 Aug 23, 2022
Code and datasets for the paper "Combining Events and Frames using Recurrent Asynchronous Multimodal Networks for Monocular Depth Prediction" (RA-L, 2021)

Combining Events and Frames using Recurrent Asynchronous Multimodal Networks for Monocular Depth Prediction This is the code for the paper Combining E

Robotics and Perception Group 69 Dec 26, 2022
Code for 'Blockwise Sequential Model Learning for Partially Observable Reinforcement Learning' (AAAI 2022)

Blockwise Sequential Model Learning Code for 'Blockwise Sequential Model Learning for Partially Observable Reinforcement Learning' (AAAI 2022) For ins

2 Jun 17, 2022
Pytorch implementation of ProjectedGAN

ProjectedGAN-pytorch Pytorch implementation of ProjectedGAN (https://arxiv.org/abs/2111.01007) Note: this repository is still under developement. @InP

Dominic Rampas 17 Dec 14, 2022
PyTorch implementation of the implicit Q-learning algorithm (IQL)

Implicit-Q-Learning (IQL) PyTorch implementation of the implicit Q-learning algorithm IQL (Paper) Currently only implemented for online learning. Offl

Sebastian Dittert 27 Dec 30, 2022
This repository collects project-relevant Isabelle/HOL formalizations.

Isabelle/HOL formalizations related to the AuReLeE project Formalization of Abstract Argumentation Frameworks See AbstractArgumentation folder for the

AuReLeE project 1 Sep 10, 2022
A simple AI that will give you si ple task and this is made with python

Crystal-AI A simple AI that will give you si ple task and this is made with python Prerequsites: Python3.6.2 pyttsx3 pip install pyttsx3 pyaudio pip i

CrystalAnd 1 Dec 25, 2021
The code for our paper submitted to RAL/IROS 2022: OverlapTransformer: An Efficient and Rotation-Invariant Transformer Network for LiDAR-Based Place Recognition.

OverlapTransformer The code for our paper submitted to RAL/IROS 2022: OverlapTransformer: An Efficient and Rotation-Invariant Transformer Network for

HAOMO.AI 136 Jan 03, 2023
PyTorch Implementation of Vector Quantized Variational AutoEncoders.

Pytorch implementation of VQVAE. This paper combines 2 tricks: Vector Quantization (check out this amazing blog for better understanding.) Straight-Th

Vrushank Changawala 2 Oct 06, 2021
Official implementation of "Learning Not to Reconstruct" (BMVC 2021)

Official PyTorch implementation of "Learning Not to Reconstruct Anomalies" This is the implementation of the paper "Learning Not to Reconstruct Anomal

Marcella Astrid 13 Dec 04, 2022
Empower Sequence Labeling with Task-Aware Language Model

LM-LSTM-CRF Check Our New NER Toolkit 🚀 🚀 🚀 Inference: LightNER: inference w. models pre-trained / trained w. any following tools, efficiently. Tra

Liyuan Liu 838 Jan 05, 2023
TrackFormer: Multi-Object Tracking with Transformers

TrackFormer: Multi-Object Tracking with Transformers This repository provides the official implementation of the TrackFormer: Multi-Object Tracking wi

Tim Meinhardt 321 Dec 29, 2022
Source code for "Progressive Transformers for End-to-End Sign Language Production" (ECCV 2020)

Progressive Transformers for End-to-End Sign Language Production Source code for "Progressive Transformers for End-to-End Sign Language Production" (B

58 Dec 21, 2022
🚩🚩🚩

My CTF Challenges 2021 AIS3 Pre-exam / MyFirstCTF Name Category Keywords Difficulty ⒸⓄⓋⒾⒹ-①⑨ (MyFirstCTF Only) Reverse Baby ★ Piano Reverse C#, .NET ★

6 Oct 28, 2021
Sequential model-based optimization with a `scipy.optimize` interface

Scikit-Optimize Scikit-Optimize, or skopt, is a simple and efficient library to minimize (very) expensive and noisy black-box functions. It implements

Scikit-Optimize 2.5k Jan 04, 2023