Visual Anomaly Detection
Visual anomaly detection aims to identify deviations from normality in images, crucial for applications like industrial quality control and medical diagnosis. Current research emphasizes developing robust methods that handle diverse anomaly types and limited labeled data, focusing on architectures like autoencoders, transformers, and increasingly, multimodal models incorporating language for improved zero-shot capabilities. This field is significant due to its potential for automating inspection processes across various industries, improving efficiency and safety while reducing reliance on extensive manual labeling.
Papers
ALLO: A Photorealistic Dataset and Data Generation Pipeline for Anomaly Detection During Robotic Proximity Operations in Lunar Orbit
Selina Leveugle, Chang Won Lee, Svetlana Stolpner, Chris Langley, Paul Grouchy, Steven Waslander, Jonathan Kelly
CableInspect-AD: An Expert-Annotated Anomaly Detection Dataset
Akshatha Arodi, Margaux Luck, Jean-Luc Bedwani, Aldo Zaimi, Ge Li, Nicolas Pouliot, Julien Beaudry, Gaétan Marceau Caron
VMAD: Visual-enhanced Multimodal Large Language Model for Zero-Shot Anomaly Detection
Huilin Deng, Hongchen Luo, Wei Zhai, Yang Cao, Yu Kang