锁定热成像图像的监督图像检索与排序技术

Rui Zhen Tan, N. Venkatarayalu, I. Atmosukarto, A. Premkumar, Tict Eng Teh, K. K. Thinn, Ming Xue
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引用次数: 1

摘要

锁定热成像技术(LIT)是集成电路失效分析中的一种非破坏性技术。在诊断故障原因时,FA专家要花费很长时间搜索历史图像存储库。本文提出了一种结合图像相似度和分类的有监督图像检索和排序算法。通过预先训练好的VGG16网络从图像中提取特征。然后进行主成分分析(PCA)来识别100个重要成分,作为每个图像的签名,并计算欧几里得距离作为相似性度量。接下来,开发了一个复制人类判断过程的双层分类器。分类器的第一层区分查询图像是在封装级别还是在芯片级别拍摄的,而第二层识别图像的封装或设备类别。通过分类器对查询图像进行分析,确定其在两层中的类。与查询图像属于同一类的数据库图像的距离减少,将它们移动到前面。这样排序和排名的图像是推荐的。在372张图像的数据集上对算法进行了测试,其中298张用于数据库构建,74张用作查询图像。类分类的结合通过推荐更多与查询属于同一类的图像,提高了准确率。
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Supervised Image Retrieval and Ranking Technique for Lock-in Thermography Images
Lock-in Thermography (LIT) is a non-destructive technique in the failure analysis (FA) of integrated circuits (ICs). In diagnosing the cause of failure, a FA specialist spends a long time searching through a repository of historical images. In this paper, a supervised image retrieval and ranking algorithm incorporating image similarity and classification has been developed. Features are extracted from the images by passing them through the pre-trained VGG16 network. Principal component analysis (PCA) is then performed to identify 100 significant components that serve as signatures for each image and for computing Euclidean distance as the similarity metric. Next, a two-layer classifier replicating the human judgment process has been developed. The first layer of the classifier differentiates whether the query image is taken at the package or die level, whereas the second layer identifies the package or device class of the image. By analyzing the query image through the classifier, its classes in the two layers are determined. The distances of database images belonging to the same classes as the query image are reduced, shifting them ahead. The images thus sorted and ranked are recommended. The algorithm was tested on a dataset of 372 images of which 298 images were used for database construction, and 74 images were used as queried images. The incorporation of class classification improved the precision rate by recommending more images belonging to the same classes as the query.
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