Title
Depth estimation from a single SEM image using pixel-wise fine-tuning with multimodal data
Abstract
To support the ongoing size reduction in integrated circuits, the need for accurate depth measurements of on-chip structures becomes increasingly important. Unfortunately, present metrology tools do not offer a practical solution. In the semiconductor industry, critical dimension scanning electron microscopes (CD-SEMs) are predominantly used for 2D imaging at a local scale. The main objective of this work is to investigate whether sufficient 3D information is present in a single SEM image for accurate surface reconstruction of the device topology. In this work, we present a method that is able to produce depth maps from synthetic and experimental SEM images. We demonstrate that the proposed neural network architecture, together with a tailored training procedure, leads to accurate depth predictions. The training procedure includes a weakly supervised domain adaptation step, which is further referred to as pixel-wise fine-tuning. This step employs scatterometry data to address the ground-truth scarcity problem. We have tested this method first on a synthetic contact hole dataset, where a mean relative error smaller than 6.2% is achieved at realistic noise levels. Additionally, it is shown that this method is well suited for other important semiconductor metrics, such as top critical dimension (CD), bottom CD and sidewall angle. To the extent of our knowledge, we are the first to achieve accurate depth estimation results on real experimental data, by combining data from SEM and scatterometry measurements. An experiment on a dense line space dataset yields a mean relative error smaller than 1%.
Year
DOI
Venue
2022
10.1007/s00138-022-01314-w
Machine Vision and Applications
Keywords
DocType
Volume
SEM images, Scatterometry, Optical critical dimension, Monocular depth estimation, Domain adaptation, Weakly supervised learning
Journal
33
Issue
ISSN
Citations 
4
0932-8092
0
PageRank 
References 
Authors
0.34
6
5
Name
Order
Citations
PageRank
Tim Houben100.34
Thomas Huisman200.34
Maxim Pisarenco300.34
Fons van der Sommen400.34
Peter H. N. de With500.34