One Dinomaly2 Detect Them All: A Unified Framework for Full-Spectrum Unsupervised Anomaly Detection
Jia Guo, Shuai Lu, Lei Fan, Zelin Li, Donglin Di, Yang Song, Weihang Zhang, Wenbing Zhu, Hong Yan, Fang Chen, Huiqi Li, Hongen Liao

TL;DR
Dinomaly2 is a unified, minimalist framework for full-spectrum unsupervised anomaly detection that outperforms existing models across diverse data modalities, tasks, and domains with minimal modifications.
Contribution
It introduces Dinomaly2, the first truly unified framework for image anomaly detection that achieves superior performance through a simple, scalable, and adaptable design across multiple scenarios.
Findings
Achieves 99.9% I-AUROC on MVTec-AD
Surpasses previous full-shot models with only 8 normal examples per class
Demonstrates state-of-the-art results across 12 benchmarks and multiple modalities
Abstract
Unsupervised anomaly detection (UAD) has evolved from building specialized single-class models to unified multi-class models, yet existing multi-class models significantly underperform the most advanced one-for-one counterparts. Moreover, the field has fragmented into specialized methods tailored to specific scenarios (multi-class, 3D, few-shot, etc.), creating deployment barriers and highlighting the need for a unified solution. In this paper, we present Dinomaly2, the first unified framework for full-spectrum image UAD, which bridges the performance gap in multi-class models while seamlessly extending across diverse data modalities and task settings. Guided by the "less is more" philosophy, we demonstrate that the orchestration of five simple element achieves superior performance in a standard reconstruction-based framework. This methodological minimalism enables natural extension…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Domain Adaptation and Few-Shot Learning · Machine Learning and Data Classification
