Patents by Inventor Irad PELEG

Irad PELEG 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: 11790515
    Abstract: A system for classifying a pattern of interest (POI) on a semiconductor specimen is disclosed. The system comprises a processor and memory circuitry. The memory circuitry is configured to obtain a high-resolution image of the POI, and to generate data usable for classifying the POI in accordance with a defectiveness-related classification. To generate the data, a machine learning model is utilized that has been trained in accordance with training samples. The training samples include a high-resolution training image captured by scanning a respective training pattern on a specimen, the respective training pattern being similar to the POI. The training samples also include a label associated with the image, the label being derivative of low-resolution inspection of the respective training pattern.
    Type: Grant
    Filed: May 23, 2022
    Date of Patent: October 17, 2023
    Assignee: Applied Materials Israel Ltd.
    Inventors: Irad Peleg, Ran Schleyen, Boaz Cohen
  • Publication number: 20230096362
    Abstract: There is provided a system to examine a semiconductor specimen, the system comprising a processor and memory circuitry configured to obtain a training sample comprising an image of a semiconductor specimen and a design image based on design data, train a machine learning module, wherein the training includes minimizing a function representative of a difference between a simulated image generated by the machine learning module based on a given design image, and a corrected image corresponding to a given image after correction of pixel position of the given image in accordance with a given displacement matrix, wherein the minimizing includes optimizing parameters of the machine learning module and of the given displacement matrix, wherein the trained machine learning module is usable to generate a simulated image of a specimen based on a design image of the specimen.
    Type: Application
    Filed: December 6, 2022
    Publication date: March 30, 2023
    Inventor: Irad PELEG
  • Patent number: 11562476
    Abstract: There is provided a system to examine a semiconductor specimen, the system comprising a processor and memory circuitry configured to obtain a training sample comprising an image of a semiconductor specimen and a design image based on design data, train a machine learning module, wherein the training includes minimizing a function representative of a difference between a simulated image generated by the machine learning module based on a given design image, and a corrected image corresponding to a given image after correction of pixel position of the given image in accordance with a given displacement matrix, wherein the minimizing includes optimizing parameters of the machine learning module and of the given displacement matrix, wherein the trained machine learning module is usable to generate a simulated image of a specimen based on a design image of the specimen.
    Type: Grant
    Filed: September 3, 2020
    Date of Patent: January 24, 2023
    Assignee: Applied Materials Israel Ltd.
    Inventor: Irad Peleg
  • Publication number: 20220301151
    Abstract: A system of classifying a pattern of interest (POI) on a semiconductor specimen, the system comprising a processor and memory circuitry configured to: obtain a high-resolution image of the POI, and generate data usable for classifying the POI in accordance with a defectiveness-related classification, wherein the generating utilizes a machine learning model that has been trained in accordance with training samples comprising: a high-resolution training image captured by scanning a respective training pattern on a specimen, the respective training pattern being similar to the POI, and a label associated with the image, the label being derivative of low-resolution inspection of the respective training pattern.
    Type: Application
    Filed: May 23, 2022
    Publication date: September 22, 2022
    Inventors: Irad PELEG, Ran SCHLEYEN, Boaz Cohen
  • Patent number: 11449711
    Abstract: There is provided a method of defect detection on a specimen and a system thereof. The method includes: obtaining a runtime image representative of at least a portion of the specimen; processing the runtime image using a supervised model to obtain a first output indicative of the estimated presence of first defects on the runtime image; processing the runtime image using an unsupervised model component to obtain a second output indicative of the estimated presence of second defects on the runtime image; and combining the first output and the second output using one or more optimized parameters to obtain a defect detection result of the specimen.
    Type: Grant
    Filed: January 2, 2020
    Date of Patent: September 20, 2022
    Assignee: Applied Materials Isreal Ltd.
    Inventors: Ran Badanes, Ran Schleyen, Boaz Cohen, Irad Peleg, Denis Suhanov, Ore Shtalrid
  • Patent number: 11379972
    Abstract: A system of classifying a pattern of interest (POI) on a semiconductor specimen, where the system includes a processor and memory circuitry configured to obtain a high-resolution image of the POI, and generate data usable for classifying the POI in accordance with a defectiveness-related classification. Generating the data utilizes a machine learning model that has been trained in accordance with training samples. The training samples include a high-resolution training image captured by scanning a respective training pattern on a specimen, the respective training pattern being similar to the POI, and a label associated with the image. The label is derivative of low-resolution inspection of the respective training pattern.
    Type: Grant
    Filed: June 3, 2020
    Date of Patent: July 5, 2022
    Assignee: Applied Materials Israel Ltd.
    Inventors: Irad Peleg, Ran Schleyen, Boaz Cohen
  • Publication number: 20220067918
    Abstract: There is provided a system to examine a semiconductor specimen, the system comprising a processor and memory circuitry configured to obtain a training sample comprising an image of a semiconductor specimen and a design image based on design data, train a machine learning module, wherein the training includes minimizing a function representative of a difference between a simulated image generated by the machine learning module based on a given design image, and a corrected image corresponding to a given image after correction of pixel position of the given image in accordance with a given displacement matrix, wherein the minimizing includes optimizing parameters of the machine learning module and of the given displacement matrix, wherein the trained machine learning module is usable to generate a simulated image of a specimen based on a design image of the specimen.
    Type: Application
    Filed: September 3, 2020
    Publication date: March 3, 2022
    Inventor: Irad PELEG
  • Publication number: 20210383530
    Abstract: A system of classifying a pattern of interest (POI) on a semiconductor specimen, the system comprising a processor and memory circuitry configured to: obtain a high-resolution image of the POI, and generate data usable for classifying the POI in accordance with a defectiveness-related classification, wherein the generating utilizes a machine learning model that has been trained in accordance with training samples comprising: a high-resolution training image captured by scanning a respective training pattern on a specimen, the respective training pattern being similar to the POI, and a label associated with the image, the label being derivative of low-resolution inspection of the respective training pattern.
    Type: Application
    Filed: June 3, 2020
    Publication date: December 9, 2021
    Inventors: Irad PELEG, Ran SCHLEYEN, Boaz COHEN
  • Publication number: 20210209418
    Abstract: There is provided a method of defect detection on a specimen and a system thereof. The method includes: obtaining a runtime image representative of at least a portion of the specimen; processing the runtime image using a supervised model to obtain a first output indicative of the estimated presence of first defects on the runtime image; processing the runtime image using an unsupervised model component to obtain a second output indicative of the estimated presence of second defects on the runtime image; and combining the first output and the second output using one or more optimized parameters to obtain a defect detection result of the specimen.
    Type: Application
    Filed: January 2, 2020
    Publication date: July 8, 2021
    Inventors: Ran BADANES, Ran SCHLEYEN, Boaz COHEN, Irad PELEG, Denis SUHANOV, Ore SHTALRID