Although the process variables of epoxy resins alter their mechanical properties, the visual identification of the characteristic features of X-ray images of samples of these materials is challenging. To facilitate the identification, we approximate the magnitude of the gradient of the intensity field of the X-ray images of different kinds of epoxy resins and then we use deep learning to discover the most representative features of the transformed images. In this solution of the inverse problem to finding characteristic features to discriminate samples of heterogeneous materials, we use the eigenvectors obtained from the singular value decomposition of all the channels of the feature maps of the early layers in a convolutional neural network. While the strongest activated channel gives a visual representation of the characteristic features, often these are not robust enough in some practical settings. On the other hand, the left singular vectors of the matrix decomposition of the feature maps, barely change when variables such as the capacity of the network or network architecture change. High classification accuracy and robustness of characteristic features are presented in this work.
翻译:虽然环氧树脂的流程变量改变了其机械特性,但是对这些材料样品X射线图像特征的直观识别具有挑战性。为了便于识别,我们比较了不同种类环氧树脂X射线图像强度的梯度,然后我们用深层次的学习来发现变形图像最有代表性的特性。在寻找差异材料样本的特征特征的反向问题的这一解决方案中,我们使用从动态神经网络中早期层地貌图所有渠道的单值分解中取得的树叶素。最强的激活频道提供了特征的直观表示,但在某些实际环境中这些特征往往不够强。另一方面,特征图矩阵的左单向矢量分解,当网络或网络结构变化的能力等变量出现时几乎没有变化。在这项工作中,分类精确性和特征特征的稳健度很高。