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Distributed adaptive spectral and spatial sensor fusion for super-resolution classification

机译:分布式自适应光谱和空间传感器融合,用于超分辨率分类

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A distributed architecture for adaptive sensor fusion (a multisensor fusion neural net) is introduced for 3D imagery data that makes use of a super-resolution technique computed with a Bregman-Iteration deconvolution algorithm. This architecture is a cascaded neural network, which consists of two levels of neural networks. The first level consists of sensor networks: two independent sensor neural nets, namely, a spatial neural net and spectral neural net. The second level is a fusion neural net, which contains a single neural net that combines the information from the sensor level. The inputs to the sensor networks are obtained from unsupervised spatial and spectral segmentation algorithms that can be applied to the original imagery or imagery enhanced by a proposed super-resolution process. Spatial segmentation is obtained by a mean-shift method and spectral segmentation is obtained by a Stochastic Expectation Maximization method. The decision outputs from the sensor nets are used to train the fusion net to a specific overall decision. The overall approach is tested with an experiment involving a multi-sensor airborne collection of LIDAR and Hyperspectral data over a university campus in Gulfport MS. The success of the system in utilizing sensor synergism for an enhanced classification is clearly demonstrated. The final class map contains the geographical classes as well as the signature classes.
机译:用于适自适应传感器融合(多传感器融合神经网络)的分布式架构,用于3D图像数据,该数据具有使用带有Bregman-ereation Deconvolution算法计算的超分辨率技术。这种架构是一种级联神经网络,由两个级别的神经网络组成。第一级由传感器网络组成:两个独立的传感器神经网络,即空间神经网络和光谱神经网络。第二级是融合神经网络,其包含一个单独的神经网络,该神经网络将信息与传感器级别相结合。传感器网络的输入是从无监督的空间和光谱分割算法获得,该频谱分割算法可以应用于由所提出的超分辨率过程增强的原始图像或图像。通过平均换档方法获得空间分割,通过随机期望最大化方法获得光谱分割。传感器网的判定输出用于培训融合网以特定的整体决策。通过在Gulfport MS中的大学校园内使用涉及多传感器空气收集的LIDAR和高光谱数据进行实验来测试整体方法。清楚地证明了系统在利用传感器协同作用的增强分类的成功。最终类映射包含地理类以及签名类。

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