Patents by Inventor Oksen Baris

Oksen Baris 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: 9922269
    Abstract: Defect classification includes acquiring one or more images of a specimen including multiple defects, grouping the defects into groups of defect types based on the attributes of the defects, receiving a signal from a user interface device indicative of a first manual classification of a selected number of defects from the groups, generating a classifier based on the first manual classification and the attributes of the defects, classifying, with the classifier, one or more defects not manually classified by the manual classification, identifying the defects classified by the classifier having the lowest confidence level, receiving a signal from the user interface device indicative of an additional manual classification of the defects having the lowest confidence level, determining whether the additional manual classification identifies one or more additional defect types not identified in the first manual classification, and iterating the procedure until no new defect types are found.
    Type: Grant
    Filed: January 29, 2016
    Date of Patent: March 20, 2018
    Assignee: KLA-Tencor Corporation
    Inventors: Sankar Venkataraman, Li He, John R. Jordan, III, Oksen Baris, Harsh Sinha
  • Publication number: 20170076911
    Abstract: Systems and methods for discovering defects on a wafer are provided. One method includes detecting defects on a wafer by applying a threshold to output generated by a detector in a first scan of the wafer and determining values for features of the detected defects. The method also includes automatically ranking the features, identifying feature cut-lines to group the defect into bins, and, for each of the bins, determining one or more parameters that if applied to the values for the features of the defects in each of the bins will result in a predetermined number of the defects in each of the bins. The method also includes applying the one or more determined parameters to the output generated by the detector in a second scan of the wafer to generate a defect population that has a predetermined defect count and is diversified in the values for the features.
    Type: Application
    Filed: November 22, 2016
    Publication date: March 16, 2017
    Inventors: Hong Chen, Kenong Wu, Martin Plihal, Vidur Pandita, Ravikumar Sanapala, Vivek Bhagat, Rahul Lakhawat, Oksen Baris, Rajesh Ramachandran, Naoshin Haque
  • Patent number: 9518934
    Abstract: Systems and methods for discovering defects on a wafer are provided. One method includes detecting defects on a wafer by applying a threshold to output generated by a detector in a first scan of the wafer and determining values for features of the detected defects. The method also includes automatically ranking the features, identifying feature cut-lines to group the defect into bins, and, for each of the bins, determining one or more parameters that if applied to the values for the features of the defects in each of the bins will result in a predetermined number of the defects in each of the bins. The method also includes applying the one or more determined parameters to the output generated by the detector in a second scan of the wafer to generate a defect population that has a predetermined defect count and is diversified in the values for the features.
    Type: Grant
    Filed: November 3, 2015
    Date of Patent: December 13, 2016
    Assignee: KLA-Tencor Corp.
    Inventors: Hong Chen, Kenong Wu, Martin Plihal, Vidur Pandita, Ravikumar Sanapala, Vivek Bhagat, Rahul Lakhawat, Oksen Baris, Rajesh Ramachandran, Naoshin Haque
  • Publication number: 20160358041
    Abstract: Defect classification includes acquiring one or more images of a specimen including multiple defects, grouping the defects into groups of defect types based on the attributes of the defects, receiving a signal from a user interface device indicative of a first manual classification of a selected number of defects from the groups, generating a classifier based on the first manual classification and the attributes of the defects, classifying, with the classifier, one or more defects not manually classified by the manual classification, identifying the defects classified by the classifier having the lowest confidence level, receiving a signal from the user interface device indicative of an additional manual classification of the defects having the lowest confidence level, determining whether the additional manual classification identifies one or more additional defect types not identified in the first manual classification, and iterating the procedure until no new defect types are found.
    Type: Application
    Filed: January 29, 2016
    Publication date: December 8, 2016
    Inventors: Sankar Venkataraman, Li He, John R. Jordan, III, Oksen Baris, Harsh Sinha
  • Publication number: 20160123898
    Abstract: Systems and methods for discovering defects on a wafer are provided. One method includes detecting defects on a wafer by applying a threshold to output generated by a detector in a first scan of the wafer and determining values for features of the detected defects. The method also includes automatically ranking the features, identifying feature cut-lines to group the defect into bins, and, for each of the bins, determining one or more parameters that if applied to the values for the features of the defects in each of the bins will result in a predetermined number of the defects in each of the bins. The method also includes applying the one or more determined parameters to the output generated by the detector in a second scan of the wafer to generate a defect population that has a predetermined defect count and is diversified in the values for the features.
    Type: Application
    Filed: November 3, 2015
    Publication date: May 5, 2016
    Inventors: Hong Chen, Kenong Wu, Martin Plihal, Vidur Pandita, Ravikumar Sanapala, Vivek Bhagat, Rahul Lakhawat, Oksen Baris, Rajesh Ramachandran, Naoshin Haque