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Fusion of hyperspectral and ladar data for autonomous target detection

机译:自治目标检测的高光谱和拉达数据的融合

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Robust fusion of data from disparate sensor modalities can provide improved target detection performance over those attainable with the individual sensors. In particular, detection of low-radiance manmade objects or objects under shadow obscuration in hyperspectral imagery (HSI) with acceptable false alarm rates has proven especially challenging. We have developed a fusion algorithm for the enhanced detection of difficult targets when the HSI data is simultaneously collected with LADAR data. Initial detections are obtained by applying a sub-space RX (SSRX) algorithm to the HSI data. In parallel, LADAR-derived digital elevation map (DEM) is segmented and coordinates of objects within a specific elevation range and size are returned to the HSI processor for their spectral signature extraction. Each extracted signature that has not been already detected by SSRX is used in secondary HSI detection employing the adaptive cosine estimator (ACE) algorithm. We show that spatial distribution of ACE score allows for confident discrimination between background elevations and manmade objects. Key to cross-characterization of the data is the accurate co-alignment of the image data. We have also developed an algorithm for automatic co-registration of ladar and HSI imagery, based on the maximization of mutual information, which can provide accurate, sub-pixel registration even if the case when the imaging geometries for the two sensors differ. Details of both algorithms will be presented and results from application to field data will be discussed
机译:来自不同传感器模型的数据的鲁棒融合可以提供改进的目标检测性能,而是可以通过各个传感器的可达到的目标进行改进的目标检测性能。特别地,具有可接受的误报率的高光谱图像(HSI)下的阴影遮蔽下的低辐射造成的物体或物体的检测已经被证明特别具有挑战性。当HSI数据同时用LADAR数据收集时,我们开发了一种用于增强困难目标的融合算法。通过将子空间Rx(SSRX)算法应用于HSI数据来获得初始检测。并行地,Ladar导出的数字高度映射(DEM)被分段,特定高程范围内的物体的坐标返回到HSI处理器以进行它们的光谱签名提取。通过SSRX已未检测到的每个提取的签名用于采用自适应余弦估计器(ACE)算法的辅助HSI检测。我们表明ACE评分的空间分布允许背景高度和人造对象之间的自信地区。数据的横跨数据的关键是图像数据的精确协调。我们还开发了一种用于LADAR和HSI图像的自动共同登记算法,基于互信息的最大化,即使两个传感器的成像几何形状不同,也可以提供准确,子像素注册。将展示两个算法的细节,并讨论应用于现场数据的结果

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