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Autori principali: Hossain, Mazharul, Robinson, Aaron, Wang, Lan, Preza, Chrysanthe
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2408.07114
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author Hossain, Mazharul
Robinson, Aaron
Wang, Lan
Preza, Chrysanthe
author_facet Hossain, Mazharul
Robinson, Aaron
Wang, Lan
Preza, Chrysanthe
contents Hyperspectral sensing is a valuable tool for detecting anomalies and distinguishing between materials in a scene. Hyperspectral anomaly detection (HS-AD) helps characterize the captured scenes and separates them into anomaly and background classes. It is vital in agriculture, environment, and military applications such as RSTA (reconnaissance, surveillance, and target acquisition) missions. We previously designed an equal voting ensemble of hyperspectral unmixing and three unsupervised HS-AD algorithms. We later utilized a supervised classifier to determine the weights of a voting ensemble, creating a hybrid of heterogeneous unsupervised HS-AD algorithms with a supervised classifier in a model stacking, which improved detection accuracy. However, supervised classification methods usually fail to detect novel or unknown patterns that substantially deviate from those seen previously. In this work, we evaluate our technique and other supervised and unsupervised methods using general hyperspectral data to provide new insights.
format Preprint
id arxiv_https___arxiv_org_abs_2408_07114
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Investigation of unsupervised and supervised hyperspectral anomaly detection
Hossain, Mazharul
Robinson, Aaron
Wang, Lan
Preza, Chrysanthe
Image and Video Processing
Machine Learning
Hyperspectral sensing is a valuable tool for detecting anomalies and distinguishing between materials in a scene. Hyperspectral anomaly detection (HS-AD) helps characterize the captured scenes and separates them into anomaly and background classes. It is vital in agriculture, environment, and military applications such as RSTA (reconnaissance, surveillance, and target acquisition) missions. We previously designed an equal voting ensemble of hyperspectral unmixing and three unsupervised HS-AD algorithms. We later utilized a supervised classifier to determine the weights of a voting ensemble, creating a hybrid of heterogeneous unsupervised HS-AD algorithms with a supervised classifier in a model stacking, which improved detection accuracy. However, supervised classification methods usually fail to detect novel or unknown patterns that substantially deviate from those seen previously. In this work, we evaluate our technique and other supervised and unsupervised methods using general hyperspectral data to provide new insights.
title Investigation of unsupervised and supervised hyperspectral anomaly detection
topic Image and Video Processing
Machine Learning
url https://arxiv.org/abs/2408.07114