人工智能驱动的分辨率恢复技术和工作流程,以加速封装级故障分析与3D x射线显微镜

Syahirah Mohammad-Zulkifli, Bernice Zee, Qiu Wen, Maverique Ong, Yanjing Yang, Andriy Andreyev, Masako Terada, Allen Gu
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引用次数: 0

摘要

三维x射线显微镜(XRM)是半导体封装级失效分析的一种有效的高分辨率、非破坏性工具。XRM的一个限制是在可接受的扫描时间内实现大视场(fov)上的高分辨率3D图像的能力。随着现代半导体封装变得越来越复杂,人们对3D x射线仪器的需求越来越高,以高生产率和高效率对封装结构和故障进行成像。为了精确定位断层区域,可能需要具有数十毫米视场的高分辨率成像。如果进行许多高分辨率但小体积的扫描,然后进行传统的3D登记和缝合,这可能需要数百小时的扫描。在这项工作中,报告了一种新的深度学习重建方法和工作流程,以解决在大视场上实现高分辨率成像的问题。人工智能驱动的技术和工作流程可以用来恢复大视场扫描的分辨率,只有高分辨率和大视场扫描。此外,3D注册和缝合工作流程是自动化的,以实现与实际高分辨率扫描相当的恢复分辨率的大视场图像。
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An Artificial Intelligence Powered Resolution Recovery Technique and Workflow to Accelerate Package Level Failure Analysis with 3D X-ray Microscopy
Abstract 3D X-ray microscopy (XRM) is an effective highresolution and non-destructive tool for semiconductor package level failure analysis. One limitation with XRM is the ability to achieve high-resolution 3D images over large fields of view (FOVs) within acceptable scan times. As modern semiconductor packages become more complex, there are increasing demands for 3D X-ray instruments to image encapsulated structures and failures with high productivity and efficiency. With the challenge to precisely localize fault regions, it may require high-resolution imaging with a FOV of tens of millimeters. This may take over hundreds of hours of scans if many high-resolution but small-volume scans are performed and followed with the conventional 3D registration and stitches. In this work, a novel deep learning reconstruction method and workflow to address the issue of achieving highresolution imaging over a large FOV is reported. The AI powered technique and workflow can be used to restore the resolution over the large FOV scan with only a high-resolution and a large FOV scan. Additionally, the 3D registration and stitch workflow are automated to achieve the large FOV images with a recovered resolution comparable to the actual high-resolution scan.
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