Anomaly Detection
Anomaly detection is a binary classification task aimed at identifying unusual or unexpected patterns that significantly deviate from the majority of data in a dataset. The goal of this task is to discover these outliers, which may represent errors, fraud, or other types of abnormal events, and mark them for further investigation. Anomaly detection has significant application value in areas such as financial risk control, cybersecurity, and medical diagnosis.
Brainomaly
MSFR
MMR
DATE
Shell-based Anomaly (supervisered)
DFC
MuSc (zero-shot)
Self-Supervised One-class SVM, RBF kernel
DevNet
MULDE-object-centric-micro
Two-stream
Self-Supervised One-class SVM, RBF kernel
RPL+CoroCL
cDNP+OE
AttentDifferNet (SENet-AlexNet)
PCA via oversampling
SAA+
CCD
BCE-CLIP (OE)
OGNET
GLASS
CDO
GLASS
FABLE
CSAD
DIF
HTM AL
kNN
CLIP (OE)
GeneralAD
CSI
SplatPose
MPED-RNN
Reg 3D-AD
RbA
DAC(STG-NF + Jigsaw)
TSGAD
MAAT
Shell-based Anomaly (supervised)
PGM
HETMM
RCALAD
RCALAD
STG-NF - Supervised
Auto-Encoder with Regression (AER)
DMAD
SINBAD
CSI
Random Forest
GLAD
MVT-Flow
GLASS