SOTAVerified

Unsupervised Anomaly Detection

The objective of Unsupervised Anomaly Detection is to detect previously unseen rare objects or events without any prior knowledge about these. The only information available is that the percentage of anomalies in the dataset is small, usually less than 1%. Since anomalies are rare and unknown to the user at training time, anomaly detection in most cases boils down to the problem of modelling the normal data distribution and defining a measurement in this space in order to classify samples as anomalous or normal. In high-dimensional data such as images, distances in the original space quickly lose descriptive power (curse of dimensionality) and a mapping to some more suitable space is required.

Source: Unsupervised Learning of Anomaly Detection from Contaminated Image Data using Simultaneous Encoder Training

Papers

Showing 110 of 506 papers

TitleStatusHype
Conditional diffusion models for guided anomaly detection in brain images using fluid-driven anomaly randomization0
RoBiS: Robust Binary Segmentation for High-Resolution Industrial ImagesCode1
Learning Normal Patterns in Musical Loops0
Unsupervised anomaly detection in MeV ultrafast electron diffraction0
Fairness-aware Anomaly Detection via Fair Projection0
ADALog: Adaptive Unsupervised Anomaly detection in Logs with Self-attention Masked Language Model0
GAN-based synthetic FDG PET images from T1 brain MRI can serve to improve performance of deep unsupervised anomaly detection models0
CostFilter-AD: Enhancing Anomaly Detection through Matching Cost FilteringCode2
Statistical Inference for Clustering-based Anomaly Detection0
Explainable Unsupervised Anomaly Detection with Random Forest0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1Semi-orthogonalSegmentation AUROC98.1Unverified
2WeakREST-UnSegmentation AP76.9Unverified
3DSRSegmentation AP61.4Unverified