首页> 外文会议>Synthetic Aperture Radar, 2012. EUSAR. 9th European Conference on >Near Real-Time Enhancement of Fractional SAR Imagery Via Adaptive Maximum Entropy Neural Network Computing
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Near Real-Time Enhancement of Fractional SAR Imagery Via Adaptive Maximum Entropy Neural Network Computing

机译:通过自适应最大熵神经网络计算实现分数SAR图像的近实时增强

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We address a neural network (NN) computing-based approach to the problem of near real-time enhancement ofrncompressed fractional SAR imagery. The proposed approach employs the recently developed descriptivernexperiment design regularization (DEDR) framework for multimode image reconstruction/fusion aggregatedrnwith the variational analysis (VA) image enhancement paradigm implemented computationally via the newrnspeeded-up adaptive maximum entropy neural network (MENN) processing technique. The developed DEDRVA-rnoptimal MENN enhancement technique outperforms the recently proposed competing methods both in thernachievable resolution enhancement and the convergence rates that is verified via reported computer simulations.
机译:我们提出了一种基于神经网络(NN)计算的方法来解决压缩分数SAR图像的近实时增强问题。所提出的方法采用最近开发的描述性实验设计正则化(DEDR)框架进行多模图像重建/融合,并通过新的加速自适应最大熵神经网络(MENN)处理技术以计算方式实现了变分分析(VA)图像增强范例。已开发的DEDRVA-非最佳MENN增强技术在可实现的分辨率增强和收敛速度方面均优于最近提出的竞争方法,该方法已通过报告的计算机仿真得到了验证。

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