InCTRLv2: Generalist Residual Models for Few-Shot Anomaly Detection and Segmentation
Jiawen Zhu, Mengjia Niu, Guansong Pang

TL;DR
InCTRLv2 is a novel few-shot generalist model for anomaly detection and segmentation that leverages dual-branch semantic learning and vision-language priors to outperform existing methods across diverse datasets.
Contribution
The paper introduces InCTRLv2, extending previous work with dual-branch modules DASL and OASL, enabling robust anomaly detection across multiple domains without retraining.
Findings
Achieves state-of-the-art results on ten anomaly detection datasets.
Demonstrates strong generalization in few-shot settings.
Outperforms prior models in both detection and segmentation tasks.
Abstract
While recent anomaly detection (AD) methods have made substantial progress in recognizing abnormal patterns within specific domains, most of them are specialist models that are trained on large training samples from a specific target dataset, struggling to generalize to unseen datasets. To address this limitation, the paradigm of Generalist Anomaly Detection (GAD) has emerged in recent years, aiming to learn a single generalist model to detect anomalies across diverse domains without retraining. To this end, this work introduces InCTRLv2, a novel few-shot Generalist Anomaly Detection and Segmentation (GADS) framework that significantly extends our previously proposed GAD model, InCTRL. Building on the idea of learning in-context residuals with few-shot normal examples to detect anomalies as in InCTRL, InCTRLv2 introduces two new, complementary perspectives of anomaly perception under a…
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