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Background Suppression by Multivariate Gaussian Denoising Diffusion Model for Hyperspectral Target Detection
by
Feng, Jiaqi
, Zhang, Guangyun
, Huang, Yuteng
, Han, Weile
, Zhang, Rongting
in
Accuracy
/ Analysis
/ Background noise
/ background noise generation
/ background suppression
/ Computational linguistics
/ Conditional probability
/ Datasets
/ Diffusion
/ diffusion model
/ Diffusion models
/ Effectiveness
/ Environmental monitoring
/ Forecasts and trends
/ hyperspectral image (HSI)
/ Hyperspectral imaging
/ Language processing
/ Methods
/ Military applications
/ Multivariate analysis
/ Natural language interfaces
/ Neighborhoods
/ Noise reduction
/ Performance evaluation
/ Precision agriculture
/ Probability distribution
/ Segmentation
/ Strategy
/ Target detection
2026
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Background Suppression by Multivariate Gaussian Denoising Diffusion Model for Hyperspectral Target Detection
by
Feng, Jiaqi
, Zhang, Guangyun
, Huang, Yuteng
, Han, Weile
, Zhang, Rongting
in
Accuracy
/ Analysis
/ Background noise
/ background noise generation
/ background suppression
/ Computational linguistics
/ Conditional probability
/ Datasets
/ Diffusion
/ diffusion model
/ Diffusion models
/ Effectiveness
/ Environmental monitoring
/ Forecasts and trends
/ hyperspectral image (HSI)
/ Hyperspectral imaging
/ Language processing
/ Methods
/ Military applications
/ Multivariate analysis
/ Natural language interfaces
/ Neighborhoods
/ Noise reduction
/ Performance evaluation
/ Precision agriculture
/ Probability distribution
/ Segmentation
/ Strategy
/ Target detection
2026
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Background Suppression by Multivariate Gaussian Denoising Diffusion Model for Hyperspectral Target Detection
by
Feng, Jiaqi
, Zhang, Guangyun
, Huang, Yuteng
, Han, Weile
, Zhang, Rongting
in
Accuracy
/ Analysis
/ Background noise
/ background noise generation
/ background suppression
/ Computational linguistics
/ Conditional probability
/ Datasets
/ Diffusion
/ diffusion model
/ Diffusion models
/ Effectiveness
/ Environmental monitoring
/ Forecasts and trends
/ hyperspectral image (HSI)
/ Hyperspectral imaging
/ Language processing
/ Methods
/ Military applications
/ Multivariate analysis
/ Natural language interfaces
/ Neighborhoods
/ Noise reduction
/ Performance evaluation
/ Precision agriculture
/ Probability distribution
/ Segmentation
/ Strategy
/ Target detection
2026
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Background Suppression by Multivariate Gaussian Denoising Diffusion Model for Hyperspectral Target Detection
Journal Article
Background Suppression by Multivariate Gaussian Denoising Diffusion Model for Hyperspectral Target Detection
2026
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Overview
Hyperspectral image (HSI) target detection plays a critical role in both military and civilian applications, including military reconnaissance, environmental monitoring, and precision agriculture. However, the complex background of the scene severely restricts the further improvement of hyperspectral target detection performance. To address this challenge, we propose a diffusion model hyperspectral target detection method based on multivariate Gaussian background noise. The method constructs multivariate Gaussian-distributed background noise samples and introduces them into the forward diffusion process of the diffusion model. Subsequently, the denoising network is trained, the conditional probability distribution is parameterised, and a designed loss function is used to optimise the denoising performance and achieve effective suppression of the background, thus improving the detection performance. Moreover, in order to obtain accurate background noise, we propose a background noise extraction strategy based on spatial–spectral centre weighting. This strategy combines with the superpixel segmentation technique to effectively fuse the local spatial neighbourhood information of HSI. Experiments conducted on four publicly available HSI datasets demonstrate that the proposed method achieves state-of-the-art background suppression and competitive detection performance. The evaluation using ROC curves and AUC-family metrics demonstrates the effectiveness of the proposed background-suppression-guided diffusion framework.
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