Turbo-GoDec: Exploiting the Cluster Sparsity Prior for Hyperspectral Anomaly Detection
- URL: http://arxiv.org/abs/2601.12337v1
- Date: Sun, 18 Jan 2026 09:49:58 GMT
- Title: Turbo-GoDec: Exploiting the Cluster Sparsity Prior for Hyperspectral Anomaly Detection
- Authors: Jiahui Sheng, Xiaorun Li, Shuhan Chen,
- Abstract summary: We propose a new hyperspectral anomaly detection method, which we call Turbo-GoDec.<n>In this paper, we show that anomalous pixels often manifest as small, clustered groups in space, which we refer to as cluster sparsity of anomalies.<n>Experiments are conducted on three real hyperspectral image (HSI) datasets which demonstrate the superior performance of the proposed Turbo-GoDec method in detecting small-size anomalies.
- Score: 11.046952755590622
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: As a key task in hyperspectral image processing, hyperspectral anomaly detection has garnered significant attention and undergone extensive research. Existing methods primarily relt on two prior assumption: low-rank background and sparse anomaly, along with additional spatial assumptions of the background. However, most methods only utilize the sparsity prior assumption for anomalies and rarely expand on this hypothesis. From observations of hyperspectral images, we find that anomalous pixels exhibit certain spatial distribution characteristics: they often manifest as small, clustered groups in space, which we refer to as cluster sparsity of anomalies. Then, we combined the cluster sparsity prior with the classical GoDec algorithm, incorporating the cluster sparsity prior into the S-step of GoDec. This resulted in a new hyperspectral anomaly detection method, which we called Turbo-GoDec. In this approach, we modeled the cluster sparsity prior of anomalies using a Markov random field and computed the marginal probabilities of anomalies through message passing on a factor graph. Locations with high anomalous probabilities were treated as the sparse component in the Turbo-GoDec. Experiments are conducted on three real hyperspectral image (HSI) datasets which demonstrate the superior performance of the proposed Turbo-GoDec method in detecting small-size anomalies comparing with the vanilla GoDec (LSMAD) and state-of-the-art anomaly detection methods. The code is available at https://github.com/jiahuisheng/Turbo-GoDec.
Related papers
- KKA: Improving Vision Anomaly Detection through Anomaly-related Knowledge from Large Language Models [54.63075553088399]
Key Knowledge Augmentation (KKA) is a method that extracts anomaly-related knowledge from large language models (LLMs)<n>KKA classifies the generated anomalies as easy anomalies and hard anomalies according to their similarity to normal samples.<n> Experimental results show that the proposed method significantly improves the performance of various vision anomaly detectors.
arXiv Detail & Related papers (2025-02-14T07:46:49Z) - Hyperspectral Anomaly Detection with Self-Supervised Anomaly Prior [29.233195935103172]
We propose a self-supervised network called self-supervised anomaly prior (SAP) for hyperspectral anomaly detection.
SAP offers a more accurate and interpretable solution than other advanced HAD methods.
In addition, a dual-purified strategy is proposed to provide a more refined background representation with an enriched background dictionary.
arXiv Detail & Related papers (2024-04-20T10:40:12Z) - Continuous Memory Representation for Anomaly Detection [24.58611060347548]
CRAD is a novel anomaly detection method for representing normal features within a "continuous" memory.
In an evaluation using the MVTec AD dataset, CRAD significantly outperforms the previous state-of-the-art method by reducing 65.0% of the error for multi-class unified anomaly detection.
arXiv Detail & Related papers (2024-02-28T12:38:44Z) - AnomalyDiffusion: Few-Shot Anomaly Image Generation with Diffusion Model [59.08735812631131]
Anomaly inspection plays an important role in industrial manufacture.
Existing anomaly inspection methods are limited in their performance due to insufficient anomaly data.
We propose AnomalyDiffusion, a novel diffusion-based few-shot anomaly generation model.
arXiv Detail & Related papers (2023-12-10T05:13:40Z) - Don't Miss Out on Novelty: Importance of Novel Features for Deep Anomaly
Detection [64.21963650519312]
Anomaly Detection (AD) is a critical task that involves identifying observations that do not conform to a learned model of normality.
We propose a novel approach to AD using explainability to capture such novel features as unexplained observations in the input space.
Our approach establishes a new state-of-the-art across multiple benchmarks, handling diverse anomaly types.
arXiv Detail & Related papers (2023-10-01T21:24:05Z) - Projected Sliced Wasserstein Autoencoder-based Hyperspectral Images
Anomaly Detection [42.585075865267946]
We propose the Projected Sliced Wasserstein (PSW) autoencoder-based anomaly detection method.
In particular, the computation-friendly eigen-decomposition method is leveraged to find the principal component for slicing the high-dimensional data.
Comprehensive experiments conducted on various real-world hyperspectral anomaly detection benchmarks demonstrate the superior performance of the proposed method.
arXiv Detail & Related papers (2021-12-20T09:21:02Z) - 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) - New Methods and Datasets for Group Anomaly Detection From Fundamental
Physics [0.4297070083645048]
Unsupervised group anomaly detection has become a new frontier of fundamental physics.
We propose a realistic synthetic benchmark dataset (LHCO 2020) for the development of group anomaly detection algorithms.
arXiv Detail & Related papers (2021-07-06T18:00:57Z) - DASVDD: Deep Autoencoding Support Vector Data Descriptor for Anomaly
Detection [9.19194451963411]
Semi-supervised anomaly detection aims to detect anomalies from normal samples using a model that is trained on normal data.
We propose a method, DASVDD, that jointly learns the parameters of an autoencoder while minimizing the volume of an enclosing hyper-sphere on its latent representation.
arXiv Detail & Related papers (2021-06-09T21:57:41Z) - Low-rank on Graphs plus Temporally Smooth Sparse Decomposition for
Anomaly Detection in Spatiotemporal Data [37.65687661747699]
We introduce an unsupervised tensor-based anomaly detection method that takes the sparse and temporally continuous nature of anomalies into account.
The resulting optimization problem is convex, scalable, and is shown to be robust against missing data and noise.
arXiv Detail & Related papers (2020-10-23T19:34:40Z) - TadGAN: Time Series Anomaly Detection Using Generative Adversarial
Networks [73.01104041298031]
TadGAN is an unsupervised anomaly detection approach built on Generative Adversarial Networks (GANs)
To capture the temporal correlations of time series, we use LSTM Recurrent Neural Networks as base models for Generators and Critics.
To demonstrate the performance and generalizability of our approach, we test several anomaly scoring techniques and report the best-suited one.
arXiv Detail & Related papers (2020-09-16T15:52:04Z) - Toward Deep Supervised Anomaly Detection: Reinforcement Learning from
Partially Labeled Anomaly Data [150.9270911031327]
We consider the problem of anomaly detection with a small set of partially labeled anomaly examples and a large-scale unlabeled dataset.
Existing related methods either exclusively fit the limited anomaly examples that typically do not span the entire set of anomalies, or proceed with unsupervised learning from the unlabeled data.
We propose here instead a deep reinforcement learning-based approach that enables an end-to-end optimization of the detection of both labeled and unlabeled anomalies.
arXiv Detail & Related papers (2020-09-15T03:05:39Z)
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.