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Automatic target cueing of hyperspectral image data.

机译:高光谱图像数据的自动目标提示。

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Modern imaging sensors produce vast amounts of data, overwhelming human analysts. One such sensor is the Airborne Visible and Infrared Imaging Spectrometer (AVIRIS) hyperspectral sensor. The AVIRIS sensor simultaneously collects data in 224 spectral bands that range from 0.4{dollar}mu{dollar}m to 2.5{dollar}mu{dollar}m in approximately 10nm increments, producing 224 images, each representing a single spectral band. Autonomous systems are required that can fuse "important" spectral bands and then classify regions of interest if all of this data is to be exploited. This dissertation presents a comprehensive solution that consists of a new physiologically motivated fusion algorithm and a novel Bayes optimal self-architecting classifier that processes the outputs of the fusion algorithm. The fusion algorithm which uses a contrast sensitivity weighted wavelet-based multiresolution analysis is shown to outperform other fusion algorithms in both visual aesthetics and signal-to-noise ratios. The self-architecting classifier is a Radial Basis Function (RBF) Iterative Construction Algorithm (RICA) that is designed to autonomously determine the size of its network architecture for optimal classification performance. RICA is shown to outperform several neural network algorithms, including a fixed architecture multi-layer Perceptron (MLP), a fixed architecture RBF, and an adaptive architecture MLP. A proof is also presented demonstrating that RICA produces a network which is a minimum mean squared-error approximate to Bayes optimal discriminant functions. Finally, it is shown that this combination of image fusion and self-architecting classifier provide an excellent means to detect targets in hyperspectral sensor data.
机译:现代成像传感器产生大量数据,使人类分析家不知所措。一种这样的传感器是机载可见和红外成像光谱仪(AVIRIS)高光谱传感器。 AVIRIS传感器以大约10nm的增量同时收集从0.4μm至2.5μm范围内的224个光谱带中的数据,以大约10nm的增量,产生224个图像,每个图像代表一个光谱带。如果要利用所有这些数据,则需要能够融合“重要”光谱带,然后对感兴趣区域进行分类的自治系统。本文提出了一种综合的解决方案,该方案由一种新的基于生理的融合算法和一种处理融合算法输出的新型贝叶斯最优自构分类器组成。在视觉美学和信噪比方面,使用基于对比度敏感度加权小波的多分辨率分析的融合算法均优于其他融合算法。自架构分类器是一种径向基函数(RBF)迭代构造算法(RICA),该算法旨在自动确定其网络体系结构的大小,以实现最佳分类性能。 RICA的性能优于几种神经网络算法,包括固定架构的多层感知器(MLP),固定架构的RBF和自适应架构的MLP。还提供了一个证明,证明了RICA产生的网络的最小均方误差近似于贝叶斯最佳判别函数。最后,表明图像融合和自构分类器的这种组合为检测高光谱传感器数据中的目标提供了极好的手段。

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