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首页> 外文期刊>Journal of Applied Remote Sensing >Decision fusion for dual-window-based hyperspectral anomaly detector
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Decision fusion for dual-window-based hyperspectral anomaly detector

机译:基于双窗口的高光谱异常检测器的决策融合

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摘要

In hyperspectral anomaly detection, the dual-window-based detector is a widely used technique that employs two windows to capture nonstationary statistics of anomalies and background. However, its detection performance is usually sensitive to the choice of window sizes and suffers from inappropriate window settings. In this work, a decision-fusion approach is proposed to alleviate such sensitivity by merging the results from multiple detectors with different window sizes. The proposed approach is compared with the classic Reed-Xiaoli (RX) algorithm as well as kernel RX (KRX) using two real hyperspectral data. Experimental results demonstrate that it outperforms the existing detectors, such as RX, KRX, and multiple-window-based RX. The overall detection framework is suitable for parallel computing, which can greatly reduce computational time when processing large-scale remote sensing image data. (C) The Authors.
机译:在高光谱异常检测中,基于双窗口的检测器是一种广泛使用的技术,它使用两个窗口来捕获异常和背景的非平稳统计信息。但是,其检测性能通常对窗口大小的选择很敏感,并且窗口设置不适当。在这项工作中,提出了一种决策融合方法,通过合并来自具有不同窗口大小的多个检测器的结果来减轻这种敏感性。将该方法与经典的Reed-Xiaoli(RX)算法以及使用两个真实高光谱数据的内核RX(KRX)进行了比较。实验结果表明,它的性能优于现有的检测器,例如RX,KRX和基于多窗口的RX。整体检测框架适用于并行计算,在处理大规模遥感图像数据时可以大大减少计算时间。 (C)作者。

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