An Unsupervised Deep Hyperspectral Anomaly Detector

Hyperspectral image (HSI) based detection has attracted considerable attention recently in agriculture, environmental protection and military applications as different wavelengths of light can be advantageously used to discriminate different types of objects. Unfortunately, estimating the background...

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Main Authors: Ning Ma, Yu Peng, Shaojun Wang, Philip H. W. Leong
Format: Article
Language:English
Published: MDPI AG 2018-02-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/18/3/693
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author Ning Ma
Yu Peng
Shaojun Wang
Philip H. W. Leong
author_facet Ning Ma
Yu Peng
Shaojun Wang
Philip H. W. Leong
author_sort Ning Ma
collection DOAJ
description Hyperspectral image (HSI) based detection has attracted considerable attention recently in agriculture, environmental protection and military applications as different wavelengths of light can be advantageously used to discriminate different types of objects. Unfortunately, estimating the background distribution and the detection of interesting local objects is not straightforward, and anomaly detectors may give false alarms. In this paper, a Deep Belief Network (DBN) based anomaly detector is proposed. The high-level features and reconstruction errors are learned through the network in a manner which is not affected by previous background distribution assumption. To reduce contamination by local anomalies, adaptive weights are constructed from reconstruction errors and statistical information. By using the code image which is generated during the inference of DBN and modified by adaptively updated weights, a local Euclidean distance between under test pixels and their neighboring pixels is used to determine the anomaly targets. Experimental results on synthetic and recorded HSI datasets show the performance of proposed method outperforms the classic global Reed-Xiaoli detector (RXD), local RX detector (LRXD) and the-state-of-the-art Collaborative Representation detector (CRD).
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spelling doaj.art-094c3f80a319437ab34ecfa410dfe86f2022-12-22T02:07:23ZengMDPI AGSensors1424-82202018-02-0118369310.3390/s18030693s18030693An Unsupervised Deep Hyperspectral Anomaly DetectorNing Ma0Yu Peng1Shaojun Wang2Philip H. W. Leong3Department of Automatic Test and Control, School of Electrical Engineering and Automation, Harbin Institute of Technology, Harbin 150080, ChinaDepartment of Automatic Test and Control, School of Electrical Engineering and Automation, Harbin Institute of Technology, Harbin 150080, ChinaDepartment of Automatic Test and Control, School of Electrical Engineering and Automation, Harbin Institute of Technology, Harbin 150080, ChinaSchool of Electrical and Information Engineering, The University of Sydney, Sydney 2006, AustraliaHyperspectral image (HSI) based detection has attracted considerable attention recently in agriculture, environmental protection and military applications as different wavelengths of light can be advantageously used to discriminate different types of objects. Unfortunately, estimating the background distribution and the detection of interesting local objects is not straightforward, and anomaly detectors may give false alarms. In this paper, a Deep Belief Network (DBN) based anomaly detector is proposed. The high-level features and reconstruction errors are learned through the network in a manner which is not affected by previous background distribution assumption. To reduce contamination by local anomalies, adaptive weights are constructed from reconstruction errors and statistical information. By using the code image which is generated during the inference of DBN and modified by adaptively updated weights, a local Euclidean distance between under test pixels and their neighboring pixels is used to determine the anomaly targets. Experimental results on synthetic and recorded HSI datasets show the performance of proposed method outperforms the classic global Reed-Xiaoli detector (RXD), local RX detector (LRXD) and the-state-of-the-art Collaborative Representation detector (CRD).http://www.mdpi.com/1424-8220/18/3/693hyperspectral imagedeep learninganomaly detection
spellingShingle Ning Ma
Yu Peng
Shaojun Wang
Philip H. W. Leong
An Unsupervised Deep Hyperspectral Anomaly Detector
Sensors
hyperspectral image
deep learning
anomaly detection
title An Unsupervised Deep Hyperspectral Anomaly Detector
title_full An Unsupervised Deep Hyperspectral Anomaly Detector
title_fullStr An Unsupervised Deep Hyperspectral Anomaly Detector
title_full_unstemmed An Unsupervised Deep Hyperspectral Anomaly Detector
title_short An Unsupervised Deep Hyperspectral Anomaly Detector
title_sort unsupervised deep hyperspectral anomaly detector
topic hyperspectral image
deep learning
anomaly detection
url http://www.mdpi.com/1424-8220/18/3/693
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