anomaly-detection-papers-guide

Installation
SKILL.md

Industrial Anomaly Detection Papers Guide

Overview

Industrial anomaly detection uses machine learning to identify defects, faults, and anomalies in manufacturing and quality inspection. This curated collection covers methods from reconstruction-based (autoencoders) to memory-bank approaches (PatchCore), normalizing flows, knowledge distillation, and foundation model-based detectors. Includes benchmark datasets, evaluation metrics, and real-world deployment considerations.

Method Taxonomy

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4
GitHub Stars
227
First Seen
Mar 31, 2026
anomaly-detection-papers-guide — wentorai/research-plugins