Edge Detection of Microstructure Images of Magnetic Multilayer Materials via a Richer Convolutional Features Network

Shimin Zhang, Jiangsheng Gui, Zhihui Cai
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Abstract

Magnetic multilayer materials are extensively used in micro-devices and nanoelectronics areas. It is significant to implement edge detection and extraction for the microstructure images of the multilayer materials. This research deals with the edge detection and extraction of microstructures images of the magnetic multilayer material based on a richer convolutional features (RCF) network. First, an RCF network model on a 20-fold expanded Berkeley Segmentation Data Set and benchmark 500 (BSDS500) dataset is retrained. Then, such model is applied to the edge detection test on the given microstructure images of the magnetic multilayer material, and the edge probability maps containing coarse and obvious boundaries between the layers of magnetic materials are obtained. Third, the non-maximum suppression (NMS) algorithm is introduced to further refine the thick edges of the microstructure images. The results demonstrate that the RCF-based edge detection method is capable of detecting light and unclear boundaries of the magnetic multilayer material from their images, and outperforms the existing other edge detection algorithms includes Canny operator and HED network. In addition, under the expanded RCF model combining with the NMS algorithm, the edge probability map of the microstructure images of the magnetic multilayer material are almost the same as the ground truth.
磁性多层材料广泛应用于微器件和纳米电子领域。对多层材料的微观结构图像进行边缘检测和提取具有重要意义。本文研究了基于更丰富卷积特征(RCF)网络的磁性多层材料微结构图像的边缘检测与提取。首先,在扩展20倍的伯克利分割数据集和基准500 (BSDS500)数据集上重新训练RCF网络模型。然后,将该模型应用于给定磁性多层材料微观结构图像的边缘检测测试,得到磁性材料层间包含粗糙和明显边界的边缘概率图。第三,引入非最大抑制(NMS)算法,进一步细化微结构图像的粗边缘;结果表明,基于rcf的边缘检测方法能够从磁性多层材料的图像中检测出光线和不清晰的边界,并且优于现有的Canny算子和HED网络等边缘检测算法。此外,在与NMS算法相结合的扩展RCF模型下,磁性多层材料微观结构图像的边缘概率图与地面真值基本一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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