3D Magnetic Inverse Routine for Single-Segment Magnetic Field Images
J. Senthilnath, Chen Hao, F. C. Wellstood

TL;DR
This paper introduces a novel 3D magnetic inverse routine that combines deep learning, physics constraints, and optimization to accurately reconstruct 3D current flow from magnetic field images in semiconductor testing.
Contribution
The paper presents a new method integrating CNNs, physics-based constraints, and optimization for precise 3D current flow reconstruction from magnetic images.
Findings
Accurately recovers 3D current parameters with high precision.
Sets a new benchmark for magnetic image reconstruction in semiconductor packaging.
Effectively combines deep learning and physics-driven optimization.
Abstract
In semiconductor packaging, accurately recovering 3D information is crucial for non-destructive testing (NDT) to localize circuit defects. This paper presents a novel approach called the 3D Magnetic Inverse Routine (3D MIR), which leverages Magnetic Field Images (MFI) to retrieve the parameters for the 3D current flow of a single-segment. The 3D MIR integrates a deep learning (DL)-based Convolutional Neural Network (CNN), spatial-physics-based constraints, and optimization techniques. The method operates in three stages: i) The CNN model processes the MFI data to predict (), where is the wire length and is the wire's vertical depth beneath the magnetic sensors and classify segment type (). ii) By leveraging spatial-physics-based constraints, the routine provides initial estimates for the position (, , ), length (), current (), and…
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Taxonomy
TopicsMagnetic Field Sensors Techniques · Geophysical and Geoelectrical Methods · Non-Destructive Testing Techniques
