A spectral-spatial fusion anomaly detection method for hyperspectral
imagery
- URL: http://arxiv.org/abs/2202.11889v1
- Date: Thu, 24 Feb 2022 03:54:48 GMT
- Title: A spectral-spatial fusion anomaly detection method for hyperspectral
imagery
- Authors: Zengfu Hou, Siyuan Cheng, Ting Hu
- Abstract summary: spectral fusion anomaly detection (SSFAD) method is proposed for hyperspectral imagery.
New detector is designed to extract the local similarity spatial features of patch images in spatial domain.
- Score: 7.155465756606866
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In hyperspectral, high-quality spectral signals convey subtle spectral
differences to distinguish similar materials, thereby providing unique
advantage for anomaly detection. Hence fine spectra of anomalous pixels can be
effectively screened out from heterogeneous background pixels. Since the same
materials have similar characteristics in spatial and spectral dimension,
detection performance can be significantly enhanced by jointing spatial and
spectral information. In this paper, a spectralspatial fusion anomaly detection
(SSFAD) method is proposed for hyperspectral imagery. First, original spectral
signals are mapped to a local linear background space composed of median and
mean with high confidence, where saliency weight and feature enhancement
strategies are implemented to obtain an initial detection map in spectral
domain. Futhermore, to make full use of similarity information of local
background around testing pixel, a new detector is designed to extract the
local similarity spatial features of patch images in spatial domain. Finally,
anomalies are detected by adaptively combining the spectral and spatial
detection maps. The experimental results demonstrate that our proposed method
has superior detection performance than traditional methods.
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