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CGH-ANN based system in interference pattern recognition

机译:基于CGH-ANN的干扰模式识别系统

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Interference figures are often subject of interest in subsurface sensing technologies. Proper further processing of them is essential for interpretation of data covered in such images. This interpretation is often possible after recognition of the interference patterns. The article presents pattern recognition system suitable for dealing with interference figures. The system consists of optimized computer-generated hologram used for feature extraction and artificial neural network used as classifier of features. This pattern recognizer was tested with images of intermodal interference occurring in the optical fiber. If this fiber is embedded in the polymer composite material then such subsurface sensor together with mentioned pattern recognition system can be used for determining stress and distortion of that material. Since polymers are wide utilized for different constructions, including airplane wings, presented hybrid system can be used for real time, nondestructive monitoring of working stresses occurring in these constructions. The recognition of critical compressive stress can be therefore an early alarm signal of possible forthcoming danger.
机译:干扰数字通常是患有地下传感技术的兴趣的主题。正确处理它们对于解释这些图像中涵盖的数据来说是必不可少的。在识别干扰模式之后,这种解释通常是可能的。该文章介绍了适合处理干涉数据的模式识别系统。该系统由用于特征提取和人工神经网络的优化计算机生成的全息图组成,用作特征的分类器。使用在光纤中发生的多语阳部干扰的图像测试该模式识别器。如果该纤维嵌入聚合物复合材料中,则这种地下传感器与提到的图案识别系统一起可用于确定该材料的应力和变形。由于聚合物广泛用于不同的结构,因此包括飞机翼,呈现的混合系统可以实时使用,无损监测在这些结构中发生的工作应力。因此,识别临界压缩应力可以是即将到来的危险的早期报警信号。

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