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TsanKit: artificial intelligence for solder ball head-in-pillow defect inspection

机译:Tsankit:用于焊球头枕缺陷检查的人工智能

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摘要

In this paper, we propose an AI (Artificial Intelligence) solution for solder ball HIP (Head-In-Pillow) defect inspection. The HIP defect will affect the conductivity of the solder balls leading to intermittent failures. Due to the variable location and shape of the HIP defect, traditional machine vision algorithms cannot solve the problem completely. In recent years, Con-volutional Neural Network (CNN) has an outstanding performance in image recognition and classification, but it is easy to cause overfitting problems due to insufficient data. Therefore, we combine CNN and the machine learning algorithm Support Vector Machine (SVM) to design our inspection process. Referring to the advantages of several state-of-the-art models, we propose our 3D CNN model and adopt focal loss as well as triplet loss to solve the data imbalance problem caused by rare defective data. Our inspection method has the best performance and fast testing speed compared with several classic CNN models and the deep learning inspection software SuaKIT.
机译:在本文中,我们提出了一种用于焊球髋髋(头枕头)缺陷检查的AI(人工智能)解决方案。髋关节缺陷会影响导致间歇故障的焊球的电导率。由于髋关节缺陷的可变位置和形状,传统的机器视觉算法无法完全解决问题。近年来,Con-volutional神经网络(CNN)在图像识别和分类中具有出色的性能,但由于数据不足,易于引起过度拟合的问题。因此,我们组合CNN和机器学习算法支持向量机(SVM)来设计我们的检查过程。参考若干先进的模型的优点,我们提出了我们的3D CNN模型,采用了焦损以及三重态损失来解决稀有缺陷数据引起的数据不平衡问题。与多种经典的CNN模型和深度学习检验软件苏格特相比,我们的检测方法具有最佳的性能和快速测试速度。

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