📄 Abstract
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 across
diverse tasks without modification, establishing that simplicity is the
foundation of true universality. Extensive experiments on 12 UAD benchmarks
demonstrate Dinomaly2's full-spectrum superiority across multiple modalities
(2D, multi-view, RGB-3D, RGB-IR), task settings (single-class, multi-class,
inference-unified multi-class, few-shot) and application domains (industrial,
biological, outdoor). For example, our multi-class model achieves unprecedented
99.9% and 99.3% image-level (I-) AUROC on MVTec-AD and VisA respectively. For
multi-view and multi-modal inspection, Dinomaly2 demonstrates state-of-the-art
performance with minimum adaptations. Moreover, using only 8 normal examples
per class, our method surpasses previous full-shot models, achieving 98.7% and
97.4% I-AUROC on MVTec-AD and VisA. The combination of minimalistic design,
computational scalability, and universal applicability positions Dinomaly2 as a
unified solution for the full spectrum of real-world anomaly detection
applications.
Authors (12)
Jia Guo
Shuai Lu
Lei Fan
Zelin Li
Donglin Di
Yang Song
+6 more
Submitted
October 20, 2025
Key Contributions
Presents Dinomaly2, the first unified framework for full-spectrum unsupervised anomaly detection (UAD) that bridges the performance gap between multi-class and single-class models. It achieves superior performance across diverse modalities and tasks through the orchestration of five simple elements, emphasizing simplicity for generalization.
Business Value
Enables robust and versatile anomaly detection systems for quality control, security, and diagnostics, reducing manual inspection needs and improving reliability.