Neural network computational technique for high-resolution remote sensing image reconstruction with system fusion

Y. Shkvarko, J.L. Leyva-Montiel, I. Villalón-Turrubiates
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Abstract

We address a new approach to the problem of improvement of the quality of scene images obtained with several sensing systems as required for remote sensing imagery, in which case we propose to exploit the idea of robust regularization aggregated with the neural network (NN) based computational implementation of the multi-sensor fusion tasks. Such a specific aggregated robust regularization problem is stated and solved to reach the aims of system fusion with a proper control of the NN's design parameters (synaptic weights and bias inputs viewed as corresponding system-level and model-level degrees of freedom) which influence the overall reconstruction performances
基于系统融合的高分辨率遥感图像重建的神经网络计算技术
我们提出了一种新的方法来提高遥感图像所需的多个传感系统获得的场景图像的质量,在这种情况下,我们提出利用鲁棒正则化的思想与基于神经网络(NN)的多传感器融合任务的计算实现相结合。本文阐述并解决了这样一个特定的聚合鲁棒正则化问题,通过对影响整体重构性能的神经网络设计参数(突触权重和偏倚输入视为相应的系统级和模型级自由度)的适当控制来达到系统融合的目的
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