首页> 外文期刊>International Journal of Computational Science and Engineering >Computational enhancement of large scale environmental imagery: aggregation of robust numerical regularisation, neural computing and digital dynamic filtering
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Computational enhancement of large scale environmental imagery: aggregation of robust numerical regularisation, neural computing and digital dynamic filtering

机译:大型环境图像的计算增强:稳健的数值正则化,神经计算和数字动态滤波的集合

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摘要

We address a new efficient robust optimisation approach to large-scale environmental image reconstruction/enhancement as required for remote sensing imaging with multi-spectral array sensors/SAR. First, the problem-oriented robustification of the previously proposed Fused Bayesian-Regularization (FBR) enhanced imaging method is performed to alleviate its ill-poseness due to system-level and model-model uncertainties. Second, the modification of the Hopfield-type Maximum Entropy Neural Network (MENN) is proposed that enables such MENN to perform numerically the robustified FBR technique via computationally efficient iterative scheme. The efficiency of the aggregated robust regularised MENN technique is verified through simulation studies of enhancement of the real-world environmental images.
机译:我们针对使用多光谱阵列传感器/ SAR进行遥感成像所需的大规模环境图像重建/增强,提出了一种新的高效鲁棒优化方法。首先,执行先前提出的融合贝叶斯正则化(FBR)增强成像方法的面向问题的鲁棒性,以减轻由于系统级和模型模型不确定性而引起的不适感。其次,提出了对Hopfield型最大熵神经网络(MENN)的修改,该修改使这种MENN能够通过高效计算的迭代方案在数值上执行鲁棒FBR技术。通过对增强现实世界环境图像的仿真研究,验证了聚合鲁棒正则化MENN技术的效率。

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