高光谱成像
探测器
计算机科学
人工智能
像素
子空间拓扑
模式识别(心理学)
噪音(视频)
背景噪声
传感器融合
图像(数学)
电信
作者
Tan Guo,Fulin Luo,Jiakun Guo,Yule Duan,Xinjian Huang,Guangyao Shi
标识
DOI:10.1109/jstars.2023.3340926
摘要
Hyperspectral target detection (HTD) methods aim to exploit the abundant hyperspectral information to distinguish the key target pixels from multifarious background pixels.However, the performances of existing HTD methods are limited by the dilemmas of scarce of target prior spectra, imprecise estimation of background spectra, as well as noise pollution.For the issues, this paper proposes a novel Target prior augmentation and Background suppression-based Multi-detector Fusion (TBMF) method for HTD, based on the joint optimization of target prior spectra augmentation, low-rank pure background spectra separation, and non-target non-background noise component removal.Specifically, a constrained linear spectral mixture model is seamlessly incorporated to implicitly augment the target prior spectra.Also, the non-target non-background components of HSI, i.e., noise with complex distribution are removed by a noise-robust l1,1-norm-based regularization.Subsequently, multiple basic constrained energy minimization (CEM) detectors are trained using the augmented diverse target spectra in the backgroundsuppression subspace derived by the separated background spectra.The detection results of these basic detectors are fused with a winner-take-all strategy to acquire the final detection result.Plenty of experimental results on four HSI datasets show that the proposed TBMF method performs promisingly when comparing with several classical and recently proposed HTD methods.
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