Patents by Inventor Efrat Rosenman

Efrat Rosenman has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 11526979
    Abstract: There are provided system and method of classifying defects in a specimen. The method includes: obtaining one or more defect clusters detected on a defect map of the specimen, each cluster characterized by a set of cluster attributes comprising spatial attributes including spatial density indicative of density of defects in one or more regions accommodating the cluster, each given defect cluster being detected at least based on the spatial density thereof meeting a criterion. The defect map also comprises non-clustered defects. Defects of interest (DOI) are identified in each cluster by performing respective defect filtrations for each cluster and non-clustered defects.
    Type: Grant
    Filed: August 14, 2020
    Date of Patent: December 13, 2022
    Assignee: APPLIED MATERIALS ISRAEL LTD.
    Inventors: Assaf Asbag, Orly Zvitia, Idan Kaizerman, Efrat Rosenman
  • Patent number: 11348001
    Abstract: There are provided system and method of classifying defects in a semiconductor specimen. The method comprises: upon obtaining by a computer a Deep Neural Network (DNN) trained to provide classification-related attributes enabling minimal defect classification error, processing a fabrication process (FP) sample using the obtained trained DNN; and, resulting from the processing, obtaining by the computer classification-related attributes characterizing the at least one defect to be classified, thereby enabling automated classification, in accordance with the obtained classification-related attributes, of the at least one defect presented in the FP image.
    Type: Grant
    Filed: August 11, 2017
    Date of Patent: May 31, 2022
    Assignee: APPLIED MATERIAL ISRAEL, LTD.
    Inventors: Leonid Karlinsky, Boaz Cohen, Idan Kaizerman, Efrat Rosenman, Amit Batikoff, Daniel Ravid, Moshe Rosenweig
  • Publication number: 20220067523
    Abstract: A computerized system and method of training a deep neural network (DNN) is provided. The DNN is trained in a first training cycle using a first training set including first training samples. Each first training sample includes at least one first training image synthetically generated based on design data. Upon receiving a user feedback with respect to the DNN trained using the first training set, a second training cycle is adjusted based on the user feedback by obtaining a second training set including augmented training samples. The DNN is re-trained using the second training set. The augmented training samples are obtained by augmenting at least part of the first training samples using defect-related synthetic data. The trained DNN is usable for examination of a semiconductor specimen.
    Type: Application
    Filed: November 8, 2021
    Publication date: March 3, 2022
    Inventors: Leonid KARLINSKY, Boaz COHEN, Idan KAIZERMAN, Efrat ROSENMAN, Amit BATIKOFF, Daniel RAVID, Moshe ROSENWEIG
  • Patent number: 11205119
    Abstract: There are provided system and method of examining a semiconductor specimen. The method comprises: upon obtaining a Deep Neural Network (DNN) trained for a given examination-related application within a semiconductor fabrication process, processing together one or more fabrication process (FP) images using the obtained trained DNN, wherein the DNN is trained using a training set comprising ground truth data specific for the given application; and obtaining examination-related data specific for the given application and characterizing at least one of the processed one or more FP images. The examination-related application can be, for example, classifying at least one defect presented by at least one FP image, segmenting the at least one FP image, detecting defects in the specimen presented by the at least one FP image, registering between at least two FP images, regression application enabling reconstructing the at least one FP image in correspondence with different examination modality, etc.
    Type: Grant
    Filed: December 19, 2016
    Date of Patent: December 21, 2021
    Assignee: Applied Materials Israel Ltd.
    Inventors: Leonid Karlinsky, Boaz Cohen, Idan Kaizerman, Efrat Rosenman, Amit Batikoff, Daniel Ravid, Moshe Rosenweig
  • Patent number: 11010665
    Abstract: There are provided system and method of segmentation a fabrication process (FP) image obtained in a fabrication of a semiconductor specimen. The method comprises: upon obtaining a Deep Neural Network (DNN) trained to provide segmentation-related data, processing a fabrication process (FP) sample using the obtained trained DNN and, resulting from the processing, obtaining by the computer segments-related data characterizing the FP image to be segmented, the obtained segments-related data usable for automated examination of the semiconductor specimen. The DNN is trained using a segmentation training set comprising a plurality of first training samples and ground truth data associated therewith, each first training sample comprises a training image; FP sample comprises the FP image to be segmented.
    Type: Grant
    Filed: August 3, 2017
    Date of Patent: May 18, 2021
    Assignee: Applied Material Israel, Ltd.
    Inventors: Leonid Karlinsky, Boaz Cohen, Idan Kaizerman, Efrat Rosenman, Amit Batikoff, Daniel Ravid, Moshe Rosenweig
  • Publication number: 20200372631
    Abstract: There are provided system and method of classifying defects in a specimen. The method includes: obtaining one or more defect clusters detected on a defect map of the specimen, each cluster characterized by a set of cluster attributes comprising spatial attributes including spatial density indicative of density of defects in one or more regions accommodating the cluster, each given defect cluster being detected at least based on the spatial density thereof meeting a criterion. The defect map also comprises non-clustered defects. Defects of interest (DOI) are identified in each cluster by performing respective defect filtrations for each cluster and non-clustered defects.
    Type: Application
    Filed: August 14, 2020
    Publication date: November 26, 2020
    Inventors: Assaf ASBAG, Orly ZVITIA, Idan KAIZERMAN, Efrat ROSENMAN
  • Patent number: 10748271
    Abstract: There are provided system and method of classifying defects in a specimen. The method includes: obtaining one or more defect clusters detected on a defect map of the specimen, each cluster characterized by a set of cluster attributes comprising spatial attributes including spatial density indicative of density of defects in one or more regions accommodating the cluster, each given defect cluster being detected at least based on the spatial density thereof meeting a criterion; for each cluster, applying a cluster classifier to a respective set of cluster attributes thereof to associate the cluster with one or more labels of a predefined set of labels, wherein the cluster classifier is trained using cluster training data; and identifying DOI in each cluster by performing a defect filtration for each cluster using one or more filtering parameters specified in accordance with the label of the cluster.
    Type: Grant
    Filed: April 25, 2018
    Date of Patent: August 18, 2020
    Assignee: APPLIED MATERIALS ISRAEL LTD.
    Inventors: Assaf Asbag, Orly Zvitia, Idan Kaizerman, Efrat Rosenman
  • Publication number: 20190333208
    Abstract: There are provided system and method of classifying defects in a specimen. The method includes: obtaining one or more defect clusters detected on a defect map of the specimen, each cluster characterized by a set of cluster attributes comprising spatial attributes including spatial density indicative of density of defects in one or more regions accommodating the cluster, each given defect cluster being detected at least based on the spatial density thereof meeting a criterion; for each cluster, applying a cluster classifier to a respective set of cluster attributes thereof to associate the cluster with one or more labels of a predefined set of labels, wherein the cluster classifier is trained using cluster training data; and identifying DOI in each cluster by performing a defect filtration for each cluster using one or more filtering parameters specified in accordance with the label of the cluster.
    Type: Application
    Filed: April 25, 2018
    Publication date: October 31, 2019
    Inventors: Assaf ASBAG, Orly ZVITIA, Idan KAIZERMAN, Efrat ROSENMAN
  • Publication number: 20190035266
    Abstract: A method for road user position report includes the steps of receiving, at a remotely located server, a digital, electronic report from a mobile device that comprises a user classification, a user geographical position, and at least one user kinetic parameter, such as a speed vector, and providing the report, from the server, to a human-operated or autonomously-controlled vehicle. The steps of receiving and providing are performed automatically and without human intervention using a telecommunication network. Road users not relevant to the vehicle are filtered-out and not provided to the vehicle.
    Type: Application
    Filed: July 26, 2017
    Publication date: January 31, 2019
    Applicant: GM GLOBAL TECHNOLOGY OPERATIONS LLC
    Inventors: Eilon Riess, Efrat Rosenman
  • Publication number: 20170364798
    Abstract: There are provided system and method of classifying defects in a semiconductor specimen. The method comprises: upon obtaining by a computer a Deep Neural Network (DNN) trained to provide classification-related attributes enabling minimal defect classification error, processing a fabrication process (FP) sample using the obtained trained DNN; and, resulting from the processing, obtaining by the computer classification-related attributes characterizing the at least one defect to be classified, thereby enabling automated classification, in accordance with the obtained classification-related attributes, of the at least one defect presented in the FP image.
    Type: Application
    Filed: August 11, 2017
    Publication date: December 21, 2017
    Inventors: Leonid KARLINSKY, Boaz COHEN, Idan KAIZERMAN, Efrat ROSENMAN, Amit BATIKOFF, Daniel RAVID, Moshe ROSENWEIG
  • Publication number: 20170357895
    Abstract: There are provided system and method of segmentation a fabrication process (FP) image obtained in a fabrication of a semiconductor specimen. The method comprises: upon obtaining a Deep Neural Network (DNN) trained to provide segmentation-related data, processing a fabrication process (FP) sample using the obtained trained DNN and, resulting from the processing, obtaining by the computer segments-related data characterizing the FP image to be segmented, the obtained segments-related data usable for automated examination of the semiconductor specimen. The DNN is trained using a segmentation training set comprising a plurality of first training samples and ground truth data associated therewith, each first training sample comprises a training image; FP sample comprises the FP image to be segmented.
    Type: Application
    Filed: August 3, 2017
    Publication date: December 14, 2017
    Inventors: Leonid KARLINSKY, Boaz COHEN, Idan KAIZERMAN, Efrat ROSENMAN, Amit BATIKOFF, Daniel RAVID, Moshe ROSENWEIG
  • Publication number: 20170177997
    Abstract: There are provided system and method of examining a semiconductor specimen. The method comprises: upon obtaining a Deep Neural Network (DNN) trained for a given examination-related application within a semiconductor fabrication process, processing together one or more fabrication process (FP) images using the obtained trained DNN, wherein the DNN is trained using a training set comprising ground truth data specific for the given application; and obtaining examination-related data specific for the given application and characterizing at least one of the processed one or more FP images. The examination-related application can be, for example, classifying at least one defect presented by at least one FP image, segmenting the at least one FP image, detecting defects in the specimen presented by the at least one FP image, registering between at least two FP images, regression application enabling reconstructing the at least one FP image in correspondence with different examination modality, etc.
    Type: Application
    Filed: December 19, 2016
    Publication date: June 22, 2017
    Inventors: Leonid KARLINSKY, Boaz COHEN, Idan KAIZERMAN, Efrat ROSENMAN, Amit BATIKOFF, Daniel RAVID, Moshe ROSENWEIG
  • Patent number: 7990546
    Abstract: A method for characterizing a surface of a sample object, the method including dividing the surface into pixels which are characterized by a parameter variation, and defining blocks of the surface as respective groups of the pixels. The method further includes irradiating the pixels in multiple scans over the surface with radiation having different, respective types of polarization, and detecting returning radiation from the pixels in response to each of the scans. For each scan, respective block signatures of the blocks are constructed, in response to the returning radiation from the group of pixels in each block. Also for each scan, a block signature variation using the respective block signatures of the blocks is determined. In response to the block signature variation, one or more of the types of polarization for use in subsequent examination of a test object are selected.
    Type: Grant
    Filed: July 15, 2008
    Date of Patent: August 2, 2011
    Assignee: Applied Materials Israel, Ltd.
    Inventors: Jeong Ho Yeo, Efrat Rosenman, Erez Ravid, Doron Meshulach, Gadi Greenberg, Kobi Kan, Yehuda Cohen, Shimon Levi
  • Publication number: 20090021749
    Abstract: A method for characterizing a surface of a sample object, the method including dividing the surface into pixels which are characterized by a parameter variation, and defining blocks of the surface as respective groups of the pixels. The method further includes irradiating the pixels in multiple scans over the surface with radiation having different, respective types of polarization, and detecting returning radiation from the pixels in response to each of the scans. For each scan, respective block signatures of the blocks are constructed, in response to the returning radiation from the group of pixels in each block. Also for each scan, a block signature variation using the respective block signatures of the blocks is determined. In response to the block signature variation, one or more of the types of polarization for use in subsequent examination of a test object are selected.
    Type: Application
    Filed: July 15, 2008
    Publication date: January 22, 2009
    Inventors: Jeong Ho Yeo, Efrat Rosenman, Erez Ravid, Doron Meshulach, Gadi Greenberg, Kobi Kan, Yehuda Cohen, Shimon Levi