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公开(公告)号:US20240354552A1
公开(公告)日:2024-10-24
申请号:US18259344
申请日:2021-12-20
发明人: Alexandru ONOSE , Bart Jacobus Martinus TIEMERSMA , Nick VERHEUL , Remco DIRKS , Davide BARBIERI , Hendrik Adriaan VAN LAARHOVEN
IPC分类号: G06N3/0455
CPC分类号: G06N3/0455
摘要: A modular autoencoder model is described. The modular autoencoder model comprises input models configured to process one or more inputs to a first level of dimensionality suitable for combination with other inputs: a common model configured to: reduce a dimensionality of combined processed inputs to generate low dimensional data in a latent space; and expand the low dimensional data in the latent space into one or more expanded versions of the one or more inputs suitable for generating one or more different outputs; output models configured to use the one or more expanded versions of the one or more inputs to generate the one or more different outputs, the one or more different outputs being approximations of the one or more inputs; and a prediction model configured to estimate one or more parameters based on the low dimensional data in the latent space.
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公开(公告)号:US20240060906A1
公开(公告)日:2024-02-22
申请号:US18270074
申请日:2021-12-20
IPC分类号: G01N21/95 , G03F7/00 , G06N3/0455 , G06N3/0895
CPC分类号: G01N21/9501 , G03F7/70625 , G03F7/706839 , G06N3/0455 , G06N3/0895
摘要: A modular autoencoder model is described. The modular autoencoder model comprises input models configured to process one or more inputs to a first level of dimensionality suitable for combination with other inputs; a common model configured to: reduce a dimensionality of combined processed inputs to generate low dimensional data in a latent space; and expand the low dimensional data in the latent space into one or more expanded versions of the one or more inputs suitable for generating one or more different outputs; output models configured to use the one or more expanded versions of the one or more inputs to generate the one or more different outputs, the one or more different outputs being approximations of the one or more inputs; and a prediction model configured to estimate one or more parameters based on the low dimensional data in the latent space.
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公开(公告)号:US20240061347A1
公开(公告)日:2024-02-22
申请号:US18259354
申请日:2021-12-20
IPC分类号: G03F7/00 , G01N21/95 , G06N3/0455 , G06N3/08
CPC分类号: G03F7/706839 , G01N21/9501 , G03F7/70616 , G06N3/0455 , G06N3/08
摘要: A modular autoencoder model is described. The modular autoencoder model comprises input models configured to process one or more inputs to a first level of dimensionality suitable for combination with other inputs; a common model configured to: reduce a dimensionality of combined processed inputs to generate low dimensional data in a latent space; and expand the low dimensional data in the latent space into one or more expanded versions of the one or more inputs suitable for generating one or more different outputs; output models configured to use the one or more expanded versions of the one or more inputs to generate the one or more different outputs, the one or more different outputs being approximations of the one or more inputs; and a prediction model configured to estimate one or more parameters based on the low dimensional data in the latent space.
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公开(公告)号:US20220171290A1
公开(公告)日:2022-06-02
申请号:US17436947
申请日:2020-02-26
发明人: Alexandru ONOSE , Remco DIRKS , Roger Hubertus Elisabeth Clementin BOSCH , Sander Silvester Adelgondus Marie JACOBS , Frank Jaco BUIJNSTERS , Siebe Tjerk DE ZWART , Artur PALHA DA SILVA CLERIGO , Nick VERHEUL
IPC分类号: G03F7/20
摘要: A method, computer program and associated apparatuses for metrology. The method includes determining a reconstruction recipe describing at least nominal values for use in a reconstruction of a parameterization describing a target. The method includes obtaining first measurement data relating to measurements of a plurality of targets on at least one substrate, the measurement data relating to one or more acquisition settings and performing an optimization by minimizing a cost function which minimizes differences between the first measurement data and simulated measurement data based on a reconstructed parameterization for each of the plurality of targets. A constraint on the cost function is imposed based on a hierarchical prior. Also disclosed is a hybrid model method comprising obtaining a coarse model operable to provide simulated coarse data; and training a data driven model to correct the simulated coarse data so as to determine simulated data for use in reconstruction.
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