Javascript must be enabled to continue!
Spectral-Spatial Anomaly Detection of Hyperspectral Data Based on Improved Isolation Forest
View through CrossRef
Anomaly
detection in hyperspectral image is affected by redundant bands and the limited
utilization capacity of spectral-spatial information. In this article, we
propose a novel Improved Isolation Forest (IIF) algorithm based on the
assumption that anomaly pixels are more susceptible to isolation than the
background pixels. The proposed IIF is a modified version of the Isolation Forest
(iForest) algorithm, which addresses the poor performance of iForest in detecting
local anomalies and anomaly detection in high-dimensional data. Further, we
propose a spectral-spatial anomaly detector based on IIF (SSIIFD) to make full
use of global and local information, as well as spectral and spatial
information. To be specific, first, we apply the Gabor filter to extract
spatial features, which are then employed as input to the Relative Mass Isolation Forest (ReMass-iForest) detector to obtain
the spatial anomaly score. Next, original images are divided into several
homogeneous regions via the Entropy Rate Segmentation (ERS) algorithm, and the
preprocessed images are then employed as input to the proposed IIF detector to
obtain the spectral anomaly score. Finally, we fuse the spatial and spectral anomaly scores by
combining them linearly to predict anomaly pixels. The experimental results on four real
hyperspectral data sets demonstrate that the proposed detector outperforms
other state-of-the-art methods.
Institute of Electrical and Electronics Engineers (IEEE)
Title: Spectral-Spatial Anomaly Detection of Hyperspectral Data Based on Improved Isolation Forest
Description:
Anomaly
detection in hyperspectral image is affected by redundant bands and the limited
utilization capacity of spectral-spatial information.
In this article, we
propose a novel Improved Isolation Forest (IIF) algorithm based on the
assumption that anomaly pixels are more susceptible to isolation than the
background pixels.
The proposed IIF is a modified version of the Isolation Forest
(iForest) algorithm, which addresses the poor performance of iForest in detecting
local anomalies and anomaly detection in high-dimensional data.
Further, we
propose a spectral-spatial anomaly detector based on IIF (SSIIFD) to make full
use of global and local information, as well as spectral and spatial
information.
To be specific, first, we apply the Gabor filter to extract
spatial features, which are then employed as input to the Relative Mass Isolation Forest (ReMass-iForest) detector to obtain
the spatial anomaly score.
Next, original images are divided into several
homogeneous regions via the Entropy Rate Segmentation (ERS) algorithm, and the
preprocessed images are then employed as input to the proposed IIF detector to
obtain the spectral anomaly score.
Finally, we fuse the spatial and spectral anomaly scores by
combining them linearly to predict anomaly pixels.
The experimental results on four real
hyperspectral data sets demonstrate that the proposed detector outperforms
other state-of-the-art methods.
Related Results
Spectral-Spatial Anomaly Detection of Hyperspectral Data Based on Improved Isolation Forest
Spectral-Spatial Anomaly Detection of Hyperspectral Data Based on Improved Isolation Forest
Anomaly
detection in hyperspectral image is affected by redundant bands and the limited
utilization capacity of spectral-spatial information. In this article, we
propose a novel Im...
Spectral-Spatial Anomaly Detection of Hyperspectral Data Based on Improved Isolation Forest
Spectral-Spatial Anomaly Detection of Hyperspectral Data Based on Improved Isolation Forest
Anomaly
detection in hyperspectral image is affected by redundant bands and the limited
utilization capacity of spectral-spatial information. In this article, we
propose a novel Im...
Mapping Mineralogical Distributions on Mars with Unsupervised Machine Learning
Mapping Mineralogical Distributions on Mars with Unsupervised Machine Learning
Abstract
Knowledge of the constituents of the Martian surface and their distributions over the planet informs us about Mars’ geomorphological formation and evolutionary h...
Anomaly Detection for Hyperspectral Images Based on Anisotropic Spatial-Spectral Total Variation and Sparse Constraint
Anomaly Detection for Hyperspectral Images Based on Anisotropic Spatial-Spectral Total Variation and Sparse Constraint
A novel anomaly detection method for hyperspectral images (HSIs) is proposed based on anisotropic spatial-spectral total variation and sparse constraint. HSIs are assumed to be not...
Anomaly Detection with Camouflage Reconnaissance in Spectral Imaging
Anomaly Detection with Camouflage Reconnaissance in Spectral Imaging
Abstract
Camouflage technology is critical in concealing targets in various environments. Traditional detection methods often rely on human visual observations , which are ...
Bands Selection for Multispectral Detection Mode of Lunar Mineralogical Spectrometer of China’s Chang’E-5 and Chang’E-6 Missions
Bands Selection for Multispectral Detection Mode of Lunar Mineralogical Spectrometer of China’s Chang’E-5 and Chang’E-6 Missions
Introduction:  In December 2020, China’s Chang’E-5 (CE-5) mission successfully landed in the northeastern part of Oceanus Procellarum on the Moon and a...
Factors influencing and patterns of forest utilization in communities around the Huay Tak Teak Biosphere Reserve, Lampang Province
Factors influencing and patterns of forest utilization in communities around the Huay Tak Teak Biosphere Reserve, Lampang Province
Background and Objectives: To establish the land regulation, it is necessary to know basic information of the surrounding community’s land use and to be aware of basic forest laws....
Learned Hyperspectral Compression Using a Student’s T Hyperprior
Learned Hyperspectral Compression Using a Student’s T Hyperprior
Hyperspectral compression is one of the most common techniques in hyperspectral image processing. Most recent learned image compression methods have exhibited excellent rate-distor...

