Deep Learning-Based Defect Classification and Detection in SEM Images
Bappaditya Deya, Dipam Goswamif, Sandip Haldera, Kasem Khalilb,, Philippe Leraya, and Magdy A. Bayoumi

TL;DR
This paper introduces a novel ensemble deep learning approach for accurate defect classification and detection in SEM images, incorporating denoising techniques to improve robustness and precision in challenging high NA applications.
Contribution
It presents a new ensemble strategy combining RetinaNet models with different backbones and a denoising scheme for SEM defect analysis, enhancing accuracy and robustness.
Findings
Improved average precision (mAP) for difficult defect classes.
Effective denoising reduces false positives and noise impact.
Ensemble approach outperforms conventional methods.
Abstract
This proposes a novel ensemble deep learning-based model to accurately classify, detect and localize different defect categories for aggressive pitches and thin resists (High NA applications).In particular, we train RetinaNet models using different ResNet, VGGNet architectures as backbone and present the comparison between the accuracies of these models and their performance analysis on SEM images with different types of defect patterns such as bridge, break and line collapses. Finally, we propose a preference-based ensemble strategy to combine the output predictions from different models in order to achieve better performance on classification and detection of defects. As CDSEM images inherently contain a significant level of noise, detailed feature information is often shadowed by noise. For certain resist profiles, the challenge is also to differentiate between a microbridge,…
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Taxonomy
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Feature Pyramid Network · Average Pooling · Convolution · Max Pooling · Batch Normalization · Focal Loss · Kaiming Initialization · Residual Connection · Global Average Pooling
