Asari Yusuke, Terada Shohei, Tanigaki Toshiaki, Takahashi Yoshio, Shinada Hiroyuki, Nakajima Hiroshi, Kanie Kiyoshi, Murakami Yasukazu
Center for Technology Innovation, Hitachi Ltd, 7-1-1 Omika, Hitachi, Ibaraki 312-1292, Japan.
Center for Exploratory Research, Hitachi Ltd, Akanuma 2520, Hatoyama, Saitama 350-0395, Japan.
Microscopy (Oxf). 2021 Oct 5;70(5):442-449. doi: 10.1093/jmicro/dfab012.
An image identification method was developed with the aid of a deep convolutional neural network (CNN) and applied to the analysis of inorganic particles using electron holography. Despite significant variation in the shapes of α-Fe2O3 particles that were observed by transmission electron microscopy, this CNN-based method could be used to identify isolated, spindle-shaped particles that were distinct from other particles that had undergone pairing and/or agglomeration. The averaging of images of these isolated particles provided a significant improvement in the phase analysis precision of the electron holography observations. This method is expected to be helpful in the analysis of weak electromagnetic fields generated by nanoparticles showing only small phase shifts.
一种借助深度卷积神经网络(CNN)开发的图像识别方法被应用于利用电子全息术对无机颗粒进行分析。尽管通过透射电子显微镜观察到的α-Fe2O3颗粒形状存在显著差异,但这种基于CNN的方法可用于识别与经历配对和/或团聚的其他颗粒不同的孤立纺锤形颗粒。对这些孤立颗粒的图像进行平均处理,显著提高了电子全息术观察的相位分析精度。预计该方法将有助于分析仅表现出小相位偏移的纳米颗粒产生的弱电磁场。