增强的鲁棒涡旋检测

Li Zhang, Xiangxu Meng
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引用次数: 2

摘要

我们提出利用机器学习的方法来增强特征检测算法的鲁棒性。首先,我们使用半监督学习来制定策略,以指导基于领域专家训练的选择性细化过程。其次,我们建议使用AdaBoost将几个局部特征检测算法组合成一个单一的、更鲁棒的复合分类器,从而产生经过验证的特征检测。复合分类器将结合所有局部分类器中最好的分类器,因为它们响应底层物理信号。我们感兴趣的具体应用是湍流中的涡流检测。我们将我们的算法应用于流体数据集,以说明我们方法的有效性。
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Enhanced Robust Vortex Detection
We propose to leverage methods of machine learning to enhance robustness of feature detection algorithm. First, we use semi-supervised learning to develop strategies for guiding the selective refinement process based on training with the domain expert. Second, we propose to combine several local feature detection algorithm into a single, more robust compound classifier using AdaBoost that produces validated feature detection. The compound classifier would combine the best of all local classifiers as they respond to the underlying physical signal. The specific application of interest is vortex detection in turbulent flows. We applied our algorithms to fluid datasets to illustrate the efficacy of our approach.
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