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StressNet: A Deep Convolutional Neural Network for recovering the stress field from Isochromatic images.

机译:胁迫网络:深度卷积神经网络,用于从同象图像中恢复应力场。

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摘要

Extending photoelasticity studies to industrial applications is a complex process generally limited by the image acquisition assembly and the computational methods for demodulating the stress field wrapped into the color fringe patterns. In response to such drawbacks, this paper proposes an auto-encoder based on deep convolutional neural networks, called StressNet, to recover the stress map from one single isochromatic image. In this case, the public dataset of synthetic photoelasticity images Tsochromatic-art' was used for training and testing achieving an averaged performance of 0.95 +/- 0.04 according to the structural similarity index. With these results, the proposed network is capable of obtaining a continuous stress surface which represents a great opportunity toward developing real time stress evaluations.
机译:扩展到工业应用的光弹性研究是通常由图像采集组件和用于将包裹成彩色条纹图案的应力场解调的计算方法的复杂过程。响应于这种缺点,本文提出了一种基于深度卷积神经网络的自动编码器,称为RenceNet,以从一个单一的同学图像恢复应力图。在这种情况下,合成光弹性图像的公共数据集TSOCOLOMAL-ART'用于根据结构相似性指数实现0.95 +/- 0.04的平均性能的训练和测试。利用这些结果,所提出的网络能够获得连续的应力表面,这代表了开发实时压力评估的巨大机会。

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