Few-Shot Anomaly Detection via Category-Agnostic Registration Learning
Most existing anomaly detection (AD) methods require a dedicated model for each category. Such a paradigm, despite its promising results, is computationally expensive and inefficient, thereby failing to meet the requirements for realworld applications. Inspired by how humans detect anomalies, by com...
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creator | Huang, Chaoqin Guan, Haoyan Jiang, Aofan Zhang, Ya Spratling, Michael Wang, Xinchao Wang, Yanfeng |
description | Most existing anomaly detection (AD) methods require a dedicated model for
each category. Such a paradigm, despite its promising results, is
computationally expensive and inefficient, thereby failing to meet the
requirements for realworld applications. Inspired by how humans detect
anomalies, by comparing a query image to known normal ones, this article
proposes a novel few-shot AD (FSAD) framework. Using a training set of normal
images from various categories, registration, aiming to align normal images of
the same categories, is leveraged as the proxy task for self-supervised
category-agnostic representation learning. At test time, an image and its
corresponding support set, consisting of a few normal images from the same
category, are supplied, and anomalies are identified by comparing the
registered features of the test image to its corresponding support image
features. Such a setup enables the model to generalize to novel test
categories. It is, to our best knowledge, the first FSAD method that requires
no model fine-tuning for novel categories: enabling a single model to be
applied to all categories. Extensive experiments demonstrate the effectiveness
of the proposed method. Particularly, it improves the current state-of-the-art
(SOTA) for FSAD by 11.3% and 8.3% on the MVTec and MPDD benchmarks,
respectively. The source code is available at
https://github.com/Haoyan-Guan/CAReg. |
doi_str_mv | 10.48550/arxiv.2406.08810 |
format | Article |
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each category. Such a paradigm, despite its promising results, is
computationally expensive and inefficient, thereby failing to meet the
requirements for realworld applications. Inspired by how humans detect
anomalies, by comparing a query image to known normal ones, this article
proposes a novel few-shot AD (FSAD) framework. Using a training set of normal
images from various categories, registration, aiming to align normal images of
the same categories, is leveraged as the proxy task for self-supervised
category-agnostic representation learning. At test time, an image and its
corresponding support set, consisting of a few normal images from the same
category, are supplied, and anomalies are identified by comparing the
registered features of the test image to its corresponding support image
features. Such a setup enables the model to generalize to novel test
categories. It is, to our best knowledge, the first FSAD method that requires
no model fine-tuning for novel categories: enabling a single model to be
applied to all categories. Extensive experiments demonstrate the effectiveness
of the proposed method. Particularly, it improves the current state-of-the-art
(SOTA) for FSAD by 11.3% and 8.3% on the MVTec and MPDD benchmarks,
respectively. The source code is available at
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each category. Such a paradigm, despite its promising results, is
computationally expensive and inefficient, thereby failing to meet the
requirements for realworld applications. Inspired by how humans detect
anomalies, by comparing a query image to known normal ones, this article
proposes a novel few-shot AD (FSAD) framework. Using a training set of normal
images from various categories, registration, aiming to align normal images of
the same categories, is leveraged as the proxy task for self-supervised
category-agnostic representation learning. At test time, an image and its
corresponding support set, consisting of a few normal images from the same
category, are supplied, and anomalies are identified by comparing the
registered features of the test image to its corresponding support image
features. Such a setup enables the model to generalize to novel test
categories. It is, to our best knowledge, the first FSAD method that requires
no model fine-tuning for novel categories: enabling a single model to be
applied to all categories. Extensive experiments demonstrate the effectiveness
of the proposed method. Particularly, it improves the current state-of-the-art
(SOTA) for FSAD by 11.3% and 8.3% on the MVTec and MPDD benchmarks,
respectively. The source code is available at
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each category. Such a paradigm, despite its promising results, is
computationally expensive and inefficient, thereby failing to meet the
requirements for realworld applications. Inspired by how humans detect
anomalies, by comparing a query image to known normal ones, this article
proposes a novel few-shot AD (FSAD) framework. Using a training set of normal
images from various categories, registration, aiming to align normal images of
the same categories, is leveraged as the proxy task for self-supervised
category-agnostic representation learning. At test time, an image and its
corresponding support set, consisting of a few normal images from the same
category, are supplied, and anomalies are identified by comparing the
registered features of the test image to its corresponding support image
features. Such a setup enables the model to generalize to novel test
categories. It is, to our best knowledge, the first FSAD method that requires
no model fine-tuning for novel categories: enabling a single model to be
applied to all categories. Extensive experiments demonstrate the effectiveness
of the proposed method. Particularly, it improves the current state-of-the-art
(SOTA) for FSAD by 11.3% and 8.3% on the MVTec and MPDD benchmarks,
respectively. The source code is available at
https://github.com/Haoyan-Guan/CAReg.</abstract><doi>10.48550/arxiv.2406.08810</doi><oa>free_for_read</oa></addata></record> |
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subjects | Computer Science - Computer Vision and Pattern Recognition |
title | Few-Shot Anomaly Detection via Category-Agnostic Registration Learning |
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