Real time dense anomaly detection by learning on synthetic negative data

05/24/2023
by   Anja Delić, et al.
0

Most approaches to dense anomaly detection rely on generative modeling or on discriminative methods that train with negative data. We consider a recent hybrid method that optimizes the same shared representation according to cross-entropy of the discriminative predictions, and negative log likelihood of the predicted energy-based density. We extend that work with a jointly trained generative flow that samples synthetic negatives at the border of the inlier distribution. The proposed extension provides potential to learn the hybrid method without real negative data. Our experiments analyze the impact of training with synthetic negative data and validate contribution of the energy-based density during training and evaluation.

READ FULL TEXT

page 1

page 2

page 3

research
07/06/2022

DenseHybrid: Hybrid Anomaly Detection for Dense Open-set Recognition

Anomaly detection can be conceived either through generative modelling o...
research
12/23/2021

Dense anomaly detection by robust learning on synthetic negative data

Standard machine learning is unable to accommodate inputs which do not b...
research
01/19/2023

Hybrid Open-set Segmentation with Synthetic Negative Data

Open-set segmentation is often conceived by complementing closed-set cla...
research
08/30/2022

Anomaly Detection using Contrastive Normalizing Flows

Detecting test data deviating from training data is a central problem fo...
research
06/18/2020

Understanding Anomaly Detection with Deep Invertible Networks through Hierarchies of Distributions and Features

Deep generative networks trained via maximum likelihood on a natural ima...
research
01/24/2019

Maximum Entropy Generators for Energy-Based Models

Unsupervised learning is about capturing dependencies between variables ...
research
10/31/2018

Consistency-based anomaly detection with adaptive multiple-hypotheses predictions

In out-of-distribution classification tasks, only some classes - the nor...

Please sign up or login with your details

Forgot password? Click here to reset