SEMI-CenterNet: A Machine Learning Facilitated Approach for Semiconductor Defect Inspection
Vic De Ridder, Bappaditya Dey, Enrique Dehaerne, Sandip Halder, Stefan, De Gendt, Bartel Van Waeyenberge

TL;DR
This paper introduces SEMI-CenterNet, a deep learning model tailored for efficient defect localization and classification in SEM images, improving speed and accuracy over traditional methods in semiconductor defect inspection.
Contribution
The paper presents SEMI-CenterNet, a novel anchor-free CNN architecture optimized for semiconductor defect detection, with enhanced computational efficiency and transfer learning capabilities.
Findings
SEMI-CenterNet outperforms previous models in inference speed.
Transfer learning reduces training time significantly.
The approach achieves high accuracy on multiple datasets.
Abstract
Continual shrinking of pattern dimensions in the semiconductor domain is making it increasingly difficult to inspect defects due to factors such as the presence of stochastic noise and the dynamic behavior of defect patterns and types. Conventional rule-based methods and non-parametric supervised machine learning algorithms like KNN mostly fail at the requirements of semiconductor defect inspection at these advanced nodes. Deep Learning (DL)-based methods have gained popularity in the semiconductor defect inspection domain because they have been proven robust towards these challenging scenarios. In this research work, we have presented an automated DL-based approach for efficient localization and classification of defects in SEM images. We have proposed SEMI-CenterNet (SEMI-CN), a customized CN architecture trained on SEM images of semiconductor wafer defects. The use of the proposed CN…
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Taxonomy
TopicsIndustrial Vision Systems and Defect Detection · Integrated Circuits and Semiconductor Failure Analysis · Electron and X-Ray Spectroscopy Techniques
Methods*Communicated@Fast*How Do I Communicate to Expedia? · fail · 1x1 Convolution · Residual Connection · Bottleneck Residual Block · Average Pooling · Convolution · Max Pooling · Batch Normalization · Residual Block
