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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing. >Spectral Radiance Modeling and Bayesian Model Averaging for Longwave Infrared Hyperspectral Imagery and Subpixel Target Identification
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Spectral Radiance Modeling and Bayesian Model Averaging for Longwave Infrared Hyperspectral Imagery and Subpixel Target Identification

机译:长波红外高光谱图像光谱辐射建模和贝叶斯模型平均及亚像素目标识别

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摘要

Hyperspectral imagery (HSI) exploitation typically requires spectral signatures for target detection and identification algorithms. As the longwave infrared (LWIR) region of the electromagnetic spectrum is dominated by thermal emission, spectral radiance measurements are influenced by object temperature, and thus, estimates of target temperature may be necessary for emissivity retrieval to support these algorithms. Therefore, lack of accurate temperature information poses a significant challenge for HSI target detection and identification. Previous studies have demonstrated LWIR hyperspectral unmixing in both radiance and emissivity domains using in-scene target signatures. Here, a radiance-domain LWIR material identification algorithm for subpixel target identification of solid materials is developed by combining spectral radiance and linear mixing models with Bayesian model averaging. Application to experimental LWIR HSI illustrates that the algorithm effectively distinguishes between solid materials with a high degree of spectral similarity and reduces the probability of false alarms by at least one order of magnitude over a standard adaptive coherence estimator detector. Limits of identification are inferred from the imagery and found to depend on material type, target size, and target geometry. For the sensor and materials in this paper, the results imply that targets of nominally 5 m2 in size with strong spectral features can be identified for ground sampling distances (GSDs) on the order of 5-10 m (with abundances as low as ~10%) whereas blackbody-like materials are difficult to distinguish for GSDs larger than approximately 3 m.
机译:高光谱图像(HSI)的开发通常需要用于目标检测和识别算法的光谱签名。由于电磁光谱的长波红外(LWIR)区域受热辐射支配,因此光谱辐射度测量受物体温度的影响,因此,目标温度的估计对于发射率检索可能是必需的,以支持这些算法。因此,缺乏准确的温度信息对HSI目标的检测和识别提出了重大挑战。先前的研究已使用场景内目标特征证明了在辐射域和发射域中的LWIR高光谱解混。在此,通过结合光谱辐射率和线性混合模型以及贝叶斯模型平均,开发了用于固体材料亚像素目标识别的辐射域LWIR材料识别算法。在实验性LWIR HSI上的应用表明,该算法可有效区分具有高度光谱相似性的固体材料,并在标准自适应相干估计器上将虚警的可能性降低至少一个数量级。从图像推断出识别极限,发现极限取决于材料类型,目标尺寸和目标几何形状。对于本文中的传感器和材料,结果表明,对于地面采样距离(GSD),可以识别标称尺寸为5 m 2 且具有很强光谱特征的目标,数量级为5-10 m (丰度低至 10%),而对于大于约3 m的GSD,难以区分黑体状物质。

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