Hyperspectral Anomaly Change Detection Based on Autoencoder

With the hyperspectral imaging technology, hyperspectral data provides abundant spectral information and plays a more important role in the geological survey, vegetation analysis, and military reconnaissance. Different from normal change detection, hyperspectral anomaly change detection (HACD) helps...

詳細記述

書誌詳細
出版年:IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
主要な著者: Meiqi Hu, Chen Wu, Liangpei Zhang, Bo Du
フォーマット: 論文
言語:英語
出版事項: IEEE 2021-01-01
主題:
オンライン・アクセス:https://ieeexplore.ieee.org/document/9380336/
_version_ 1852714353859493888
author Meiqi Hu
Chen Wu
Liangpei Zhang
Bo Du
author_facet Meiqi Hu
Chen Wu
Liangpei Zhang
Bo Du
author_sort Meiqi Hu
collection DOAJ
container_title IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
description With the hyperspectral imaging technology, hyperspectral data provides abundant spectral information and plays a more important role in the geological survey, vegetation analysis, and military reconnaissance. Different from normal change detection, hyperspectral anomaly change detection (HACD) helps to find those small but important anomaly changes between multitemporal hyperspectral images (HSI). In previous works, most classical methods use linear regression to establish the mapping relationship between two HSIs and then detect the anomalies from the residual image. However, the real spectral differences between multi-temporal HSIs are likely to be quite complex and of nonlinearity, leading to the limited performance of these linear predictors. In this article, we propose an original HACD algorithm based on autoencoder (ACDA) to give a nonlinear solution. The proposed ACDA can construct an effective predictor model when facing complex imaging conditions. In the ACDA model, two siamese autoencoder networks are deployed to construct two predictors from two directions. The predictor is used to model the spectral variation of the background to obtain the predicted image under another imaging condition. Then the mean square error between the predictive image and corresponding expected image is computed to obtain the loss map, where the spectral differences of the unchanged pixels are highly suppressed and anomaly changes are highlighted. Ultimately, we take the minimum of the two loss maps of two directions as the final anomaly change intensity map. The experiments results on public “Viareggio 2013” datasets demonstrate the efficiency and superiority over traditional methods.
format Article
id doaj-art-9ccbf9580e36411da1faf995ad625f21
institution Directory of Open Access Journals
issn 2151-1535
language English
publishDate 2021-01-01
publisher IEEE
record_format Article
spelling doaj-art-9ccbf9580e36411da1faf995ad625f212025-08-19T21:15:08ZengIEEEIEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing2151-15352021-01-01143750376210.1109/JSTARS.2021.30665089380336Hyperspectral Anomaly Change Detection Based on AutoencoderMeiqi Hu0Chen Wu1https://orcid.org/0000-0001-6461-8377Liangpei Zhang2https://orcid.org/0000-0001-6890-3650Bo Du3https://orcid.org/0000-0002-0059-8458State Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing, Wuhan University, Wuhan, ChinaState Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing, Wuhan University, Wuhan, ChinaState Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing, Wuhan University, Wuhan, ChinaSchool of Computer Science, Wuhan University, Wuhan, ChinaWith the hyperspectral imaging technology, hyperspectral data provides abundant spectral information and plays a more important role in the geological survey, vegetation analysis, and military reconnaissance. Different from normal change detection, hyperspectral anomaly change detection (HACD) helps to find those small but important anomaly changes between multitemporal hyperspectral images (HSI). In previous works, most classical methods use linear regression to establish the mapping relationship between two HSIs and then detect the anomalies from the residual image. However, the real spectral differences between multi-temporal HSIs are likely to be quite complex and of nonlinearity, leading to the limited performance of these linear predictors. In this article, we propose an original HACD algorithm based on autoencoder (ACDA) to give a nonlinear solution. The proposed ACDA can construct an effective predictor model when facing complex imaging conditions. In the ACDA model, two siamese autoencoder networks are deployed to construct two predictors from two directions. The predictor is used to model the spectral variation of the background to obtain the predicted image under another imaging condition. Then the mean square error between the predictive image and corresponding expected image is computed to obtain the loss map, where the spectral differences of the unchanged pixels are highly suppressed and anomaly changes are highlighted. Ultimately, we take the minimum of the two loss maps of two directions as the final anomaly change intensity map. The experiments results on public “Viareggio 2013” datasets demonstrate the efficiency and superiority over traditional methods.https://ieeexplore.ieee.org/document/9380336/Anomaly change detectionautoencoder (AE)feature extractionhyperspectral image (HSI)
spellingShingle Meiqi Hu
Chen Wu
Liangpei Zhang
Bo Du
Hyperspectral Anomaly Change Detection Based on Autoencoder
Anomaly change detection
autoencoder (AE)
feature extraction
hyperspectral image (HSI)
title Hyperspectral Anomaly Change Detection Based on Autoencoder
title_full Hyperspectral Anomaly Change Detection Based on Autoencoder
title_fullStr Hyperspectral Anomaly Change Detection Based on Autoencoder
title_full_unstemmed Hyperspectral Anomaly Change Detection Based on Autoencoder
title_short Hyperspectral Anomaly Change Detection Based on Autoencoder
title_sort hyperspectral anomaly change detection based on autoencoder
topic Anomaly change detection
autoencoder (AE)
feature extraction
hyperspectral image (HSI)
url https://ieeexplore.ieee.org/document/9380336/
work_keys_str_mv AT meiqihu hyperspectralanomalychangedetectionbasedonautoencoder
AT chenwu hyperspectralanomalychangedetectionbasedonautoencoder
AT liangpeizhang hyperspectralanomalychangedetectionbasedonautoencoder
AT bodu hyperspectralanomalychangedetectionbasedonautoencoder