使用模拟x射线图像训练卷积神经网络(CNN)用于伪造IC检测

Suresh dharani Parasuraman, J. Wilde
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引用次数: 0

摘要

基于x射线的无损检测加上识别假冒ic的深度学习方法正在成为最先进的技术。被测部件的铜引线框架、硅芯片等特征通过x射线摄影显示出来,形成特征空间,用于区分真假部件。使用深度学习算法的复杂性在于卷积神经网络的性能依赖于大量的训练数据集。获得这些数据集需要花费大量的时间和精力,这很容易受到基础结构尺寸和被测部件材料特性变化的影响。目的是构建一个虚拟x射线模拟工具,生成被测部件的合成射线图像,并验证其作为卷积神经网络识别假冒部件的训练数据的有效性。利用透视投影原理计算穿过物体的射线路径长度,利用x射线衰减定律模拟光子与材料的相互作用。该工具旨在导入STL文件,并可以分配材料;为此,通过重新设计的步骤,建立了待测部件和部分仿制品的CAD模型。总共生成2000张CUT的合成x射线图像和1500张伪造部件的x射线图像来训练CNN。利用VGG16 CNN模型构建了一种图像分类算法,用合成图像进行训练,预测准确率达到99.60%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Training Convolutional Neural Networks (CNN) for Counterfeit IC Detection by the Use of Simulated X-Ray Images
X-ray based non-destructive testing coupled with a deep learning approach in identifying counterfeit ICs is becoming state of the art. The features of the component under test such as copper lead frame and silicon chip are revealed by X-ray radiography, that forms the feature space to classify authentic or counterfeit component. The complexity in using deep learning algorithm is the dependence of convolutional neural networks performance on the large quantity of dataset for training. Obtaining these datasets consume an immense amount of time and work effort, which is prone to suffer from a change in the dimension of the base structure and material characteristics of the component under test. The aim is to construct a virtual X-ray simulation tool to generate synthetic radiographic images of the component under test and validate its effectiveness as training data for the convolutional neural network in identifying counterfeit component. The principle of perspective projection is used to compute the ray path length traversed through an object, and the interaction of a photon with the material is modeled using X-ray attenuation law. The tool is designed to import STL file with the possibility to assign material; for this purpose, the CAD model of the component under test and some counterfeits are developed through re-engineering steps. In total 2000 synthetic X-ray images of the CUT and 1500 X-ray images of counterfeit components are generated to train the CNN. An Image classification algorithm is constructed with VGG16 CNN model, trained with synthetic images and maximum prediction accuracy of 99.60% is attained.
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