首页> 外文会议>Conference on applications and science of neural networks, fuzzy systems, and evolutionary computation >Phase unwrapping as an ill-posed problem: performance comparison betweena neural-network-based approach and a stochastic search method,
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Phase unwrapping as an ill-posed problem: performance comparison betweena neural-network-based approach and a stochastic search method,

机译:相位展开是一个不适定的问题:基于神经网络的方法与随机搜索方法之间的性能比较,

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Abstract: 2D phase unwrapping, a problem common to signal processing, optics, and interferometric radar topographic applications, consists in retrieving an absolute phase field from principal, noisy measurements. In this paper, we analyze the application of neural networks to this complex mathematical problem, formulating it as a learning-by-examples strategy, by training a multilayer perceptron to associate a proper correction pattern to the principal phase gradient configuration on local window. In spite of the high dimensionality of this problem the proposed MLP, trained on examples from simulated phase surfaces, shows to be able to correctly remove more than half the original number of pointlike inconsistencies on real noisy interferograms. Better efficiencies could be achieved by enlarging the processing window size, so as to exploit a greater amount of information. By pushing further this change of perspective, one passes from a local to a global point of view; problems of this kind are more effectively solved, rather than through learning strategies, by minimization procedures, for which we prose a powerful algorithm, based on a stochastic approach. !13
机译:摘要:二维相位解缠是信号处理,光学和干涉雷达地形应用中常见的问题,在于从主噪声测量中获取绝对相位场。在本文中,我们通过训练多层感知器将适当的校正模式与局部窗口上的主相位梯度配置相关联,来分析神经网络在此复杂数学问题上的应用,并将其表示为“实例学习”策略。尽管此问题的维数很高,但在经过仿真的相表面实例上训练的拟议MLP显示能够正确消除实际噪声干涉图上点状不一致性原始数量的一半以上。通过扩大处理窗口的大小可以提高效率,从而利用更多的信息。通过进一步推动这种观点转变,人们可以从局部的观点转变为全局的观点。通过最小化过程,而不是通过学习策略,可以更有效地解决此类问题,为此,我们基于随机方法提出了一种功能强大的算法。 !13

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