Spatially-weighted Anomaly Detection with Regression Model

03/23/2019
by   Daiki Kimura, et al.
0

Visual anomaly detection is common in several applications including medical screening and production quality check. Although a definition of the anomaly is an unknown trend in data, in many cases some hints or samples of the anomaly class can be given in advance. Conventional methods cannot use the available anomaly data, and also do not have a robustness of noise. In this paper, we propose a novel spatially-weighted reconstruction-loss-based anomaly detection with a likelihood value from a regression model trained by all known data. The spatial weights are calculated by a region of interest generated from employing visualization of the regression model. We introduce some ways to combine with various strategies to propose a state-of-the-art method. Comparing with other methods on three different datasets, we empirically verify the proposed method performs better than the others.

READ FULL TEXT
research
10/05/2018

Spatially-weighted Anomaly Detection

Many types of anomaly detection methods have been proposed recently, and...
research
05/24/2023

Beyond Individual Input for Deep Anomaly Detection on Tabular Data

Anomaly detection is crucial in various domains, such as finance, health...
research
05/14/2020

A Weighted Mutual k-Nearest Neighbour for Classification Mining

kNN is a very effective Instance based learning method, and it is easy t...
research
08/03/2018

Robust Spectral Filtering and Anomaly Detection

We consider a setting, where the output of a linear dynamical system (LD...
research
12/25/2022

Anomaly Detection of Underwater Gliders Verified by Deployment Data

This paper utilizes an anomaly detection algorithm to check if underwate...
research
10/06/2020

Flow-based anomaly detection

We propose OneFlow - a flow-based one-class classifier for anomaly (outl...
research
10/06/2022

Env-Aware Anomaly Detection: Ignore Style Changes, Stay True to Content!

We introduce a formalization and benchmark for the unsupervised anomaly ...

Please sign up or login with your details

Forgot password? Click here to reset