Material Texture Recognition using Ultrasonic Images with Transformer Neural Networks

Xin Zhang, J. Saniie
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引用次数: 5

Abstract

Material texture recognition by estimating the grain size has been extensively used for characterization of material structures. Ultrasonic inspection can approximate material grain size nondestructively with advantages of one-sided measurement, high penetration depth and inspection accuracy. In ultrasonic testing, the energy of signal attenuates as ultrasonic signal propagates through the material. This attenuation is due to scattering and absorption, which are functions of the frequency and grain size distribution. Therefore, the attenuation and scattering of ultrasonic echoes can be used to evaluate grain size for microscopic texture. In this paper we propose to use the transformer neural networks to learn grain scattering features for material textures recognition. The transformer neural network utilizes the multi-head attention mechanism to substantially reduce the computation cost. An ultrasonic testbed platform is assembled to acquire the 3D ultrasonic data cube to train the neural networks for texture analysis. The 3D data cube consists of a sequence of 2D ultrasonic C-scan images and is obtained from three different heat-treated steel blocks. Several state-of-the-art machine learning algorithms, the deep Convolutional Neural Networks (CNNs) and Support Vector Machine (SVM) were trained and compared to classify the grain scattering textures of three heat-treated steel blocks. To build a data-efficient automatic system for ultrasonic nondestructive evaluation (NDE) applications, a self-attention based transformer neural networks: Ultrasonic Texture Recognition Vision Transformer: UTRV Transformer, was proposed to classify material textures with high testing accuracy of 96.15%.
基于变形神经网络的超声图像材料纹理识别
通过估计晶粒尺寸来识别材料纹理已被广泛用于表征材料结构。超声检测具有单面测量、穿透深度高、检测精度高等优点,可以无损地逼近材料粒度。在超声检测中,随着超声信号在材料中的传播,信号的能量会衰减。这种衰减是由于散射和吸收,这是频率和粒度分布的函数。因此,超声回波的衰减和散射可以用来评价微观纹理的晶粒尺寸。本文提出利用变形神经网络学习纹理散射特征进行材料纹理识别。变压器神经网络利用多头注意机制,大大降低了计算量。搭建超声实验平台,获取三维超声数据立方体,训练神经网络进行纹理分析。三维数据立方体由一系列二维超声c扫描图像组成,并从三个不同的热处理钢块中获得。对深度卷积神经网络(cnn)和支持向量机(SVM)等几种最先进的机器学习算法进行了训练和比较,对三种热处理钢块的颗粒散射纹理进行了分类。为了构建一个数据高效的超声无损检测自动化系统,提出了一种基于自关注的变压器神经网络:超声纹理识别视觉变压器:UTRV变压器,对材料纹理进行分类,检测准确率高达96.15%。
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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