论文标题
基于学习的高强度模式的深度学习分类
Deep learning-based classification of high intensity patterns in photorefractive crystals
论文作者
论文摘要
在本文中,我们建立了一种新方案,用于鉴定和分类,通过光赋予SBN晶体传播光,产生的高强度事件。在这些事件中,这是调制不稳定性发展的必然结果,是斑点和孤子样模式。根据统计措施(例如显着强度)开发的通常分类器通常仅提供这些事件的部分表征。在这里,我们试图通过实施卷积神经网络方法来克服这种缺陷,以将光强度分布的实验数据和相应的数值输出与不同的高强度制度相关联。火车和测试集由实验获得的强度剖面在晶体输出方面和相应的数值曲线形成。斑点检测的准确性达到100%的最大值,而孤子和苛性遗传检测的准确性高于97%。这些表演对于创建基于神经网络的例程来预测波浪介质中的极端事件是有希望的。
In this paper, we establish a new scheme for identification and classification of high intensity events generated by the propagation of light through a photorefractive SBN crystal. Among these events, which are the inevitable consequence of the development of modulation instability, are speckling and soliton-like patterns. The usual classifiers developed on statistical measures, such as the significant intensity, often provide only a partial characterization of these events. Here, we try to overcome this deficiency by implementing the convolution neural network method to relate experimental data of light intensity distribution and corresponding numerical outputs with different high intensity regimes. The train and test sets are formed of experimentally obtained intensity profiles at the crystal output facet and corresponding numerical profiles. The accuracy of detection of speckles reaches maximum value of 100%, while the accuracy of solitons and caustic detection is above 97%. These performances are promising for the creation of neural network based routines for prediction of extreme events in wave media.