CRADL: Contrastive Representations for Unsupervised Anomaly Detection
and Localization
- URL: http://arxiv.org/abs/2301.02126v1
- Date: Thu, 5 Jan 2023 16:07:49 GMT
- Title: CRADL: Contrastive Representations for Unsupervised Anomaly Detection
and Localization
- Authors: Carsten T. L\"uth, David Zimmerer, Gregor Koehler, Paul F. Jaeger,
Fabian Isensee, Jens Petersen, Klaus H. Maier-Hein
- Abstract summary: Unsupervised anomaly detection in medical imaging aims to detect and localize arbitrary anomalies without requiring anomalous data during training.
Most current state-of-the-art methods use latent variable generative models operating directly on the images.
We propose CRADL whose core idea is to model the distribution of normal samples directly in the low-dimensional representation space of an encoder trained with a contrastive pretext-task.
- Score: 2.8659934481869715
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Unsupervised anomaly detection in medical imaging aims to detect and localize
arbitrary anomalies without requiring annotated anomalous data during training.
Often, this is achieved by learning a data distribution of normal samples and
detecting anomalies as regions in the image which deviate from this
distribution. Most current state-of-the-art methods use latent variable
generative models operating directly on the images. However, generative models
have been shown to mostly capture low-level features, s.a. pixel-intensities,
instead of rich semantic features, which also applies to their representations.
We circumvent this problem by proposing CRADL whose core idea is to model the
distribution of normal samples directly in the low-dimensional representation
space of an encoder trained with a contrastive pretext-task. By utilizing the
representations of contrastive learning, we aim to fix the over-fixation on
low-level features and learn more semantic-rich representations. Our
experiments on anomaly detection and localization tasks using three distinct
evaluation datasets show that 1) contrastive representations are superior to
representations of generative latent variable models and 2) the CRADL framework
shows competitive or superior performance to state-of-the-art.
Related papers
- GLAD: Towards Better Reconstruction with Global and Local Adaptive Diffusion Models for Unsupervised Anomaly Detection [60.78684630040313]
Diffusion models tend to reconstruct normal counterparts of test images with certain noises added.
From the global perspective, the difficulty of reconstructing images with different anomalies is uneven.
We propose a global and local adaptive diffusion model (abbreviated to GLAD) for unsupervised anomaly detection.
arXiv Detail & Related papers (2024-06-11T17:27:23Z) - Self-supervised Feature Adaptation for 3D Industrial Anomaly Detection [59.41026558455904]
We focus on multi-modal anomaly detection. Specifically, we investigate early multi-modal approaches that attempted to utilize models pre-trained on large-scale visual datasets.
We propose a Local-to-global Self-supervised Feature Adaptation (LSFA) method to finetune the adaptors and learn task-oriented representation toward anomaly detection.
arXiv Detail & Related papers (2024-01-06T07:30:41Z) - Video Anomaly Detection via Spatio-Temporal Pseudo-Anomaly Generation : A Unified Approach [49.995833831087175]
This work proposes a novel method for generating generic Video-temporal PAs by inpainting a masked out region of an image.
In addition, we present a simple unified framework to detect real-world anomalies under the OCC setting.
Our method performs on par with other existing state-of-the-art PAs generation and reconstruction based methods under the OCC setting.
arXiv Detail & Related papers (2023-11-27T13:14:06Z) - Dual-distribution discrepancy with self-supervised refinement for
anomaly detection in medical images [29.57501199670898]
We introduce one-class semi-supervised learning (OC-SSL) to utilize known normal and unlabeled images for training.
Ensembles of reconstruction networks are designed to model the distribution of normal images and the distribution of both normal and unlabeled images.
We propose a new perspective on self-supervised learning, which is designed to refine the anomaly scores rather than detect anomalies directly.
arXiv Detail & Related papers (2022-10-09T11:18:45Z) - Self-Supervised Training with Autoencoders for Visual Anomaly Detection [61.62861063776813]
We focus on a specific use case in anomaly detection where the distribution of normal samples is supported by a lower-dimensional manifold.
We adapt a self-supervised learning regime that exploits discriminative information during training but focuses on the submanifold of normal examples.
We achieve a new state-of-the-art result on the MVTec AD dataset -- a challenging benchmark for visual anomaly detection in the manufacturing domain.
arXiv Detail & Related papers (2022-06-23T14:16:30Z) - AnoViT: Unsupervised Anomaly Detection and Localization with Vision
Transformer-based Encoder-Decoder [3.31490164885582]
We propose a vision transformer-based encoder-decoder model, named AnoViT, to reflect normal information by additionally learning the global relationship between image patches.
The proposed model performed better than the convolution-based model on three benchmark datasets.
arXiv Detail & Related papers (2022-03-21T09:01:37Z) - on the effectiveness of generative adversarial network on anomaly
detection [1.6244541005112747]
GANs rely on the rich contextual information of these models to identify the actual training distribution.
We suggest a new unsupervised model based on GANs --a combination of an autoencoder and a GAN.
A new scoring function was introduced to target anomalies where a linear combination of the internal representation of the discriminator and the generator's visual representation, plus the encoded representation of the autoencoder, come together to define the proposed anomaly score.
arXiv Detail & Related papers (2021-12-31T16:35:47Z) - Explainable Deep Few-shot Anomaly Detection with Deviation Networks [123.46611927225963]
We introduce a novel weakly-supervised anomaly detection framework to train detection models.
The proposed approach learns discriminative normality by leveraging the labeled anomalies and a prior probability.
Our model is substantially more sample-efficient and robust, and performs significantly better than state-of-the-art competing methods in both closed-set and open-set settings.
arXiv Detail & Related papers (2021-08-01T14:33:17Z) - CutPaste: Self-Supervised Learning for Anomaly Detection and
Localization [59.719925639875036]
We propose a framework for building anomaly detectors using normal training data only.
We first learn self-supervised deep representations and then build a generative one-class classifier on learned representations.
Our empirical study on MVTec anomaly detection dataset demonstrates the proposed algorithm is general to be able to detect various types of real-world defects.
arXiv Detail & Related papers (2021-04-08T19:04:55Z) - Constrained Contrastive Distribution Learning for Unsupervised Anomaly
Detection and Localisation in Medical Images [23.79184121052212]
Unsupervised anomaly detection (UAD) learns one-class classifiers exclusively with normal (i.e., healthy) images.
We propose a novel self-supervised representation learning method, called Constrained Contrastive Distribution learning for anomaly detection (CCD)
Our method outperforms current state-of-the-art UAD approaches on three different colonoscopy and fundus screening datasets.
arXiv Detail & Related papers (2021-03-05T01:56:58Z) - Anomaly localization by modeling perceptual features [3.04585143845864]
Feature-Augmented VAE is trained by reconstructing the input image in pixel space, and also in several different feature spaces.
It achieves clear improvement over state-of-the-art methods on the MVTec anomaly detection and localization datasets.
arXiv Detail & Related papers (2020-08-12T15:09:13Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.