Patents by Inventor Libor Strakos

Libor Strakos 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: 11650171
    Abstract: Methods and apparatus determine offcut angle of a crystalline sample using electron channeling patterns (ECPs), wherein backscattered electron intensity exhibits angular variation dependent on crystal orientation. A zone axis normal to a given crystal plane follows a circle as the sample is azimuthally rotated. On an ECP image presented with tilt angles as axes, the radius of the circle is the offcut angle of the sample. Large offcut angles are determined by a tilt technique that brings the zone axis into the ECP field of view. ECPs are produced with a scanning electron beam and a monolithic backscattered electron detector; or alternatively with a stationary electron beam and a pixelated electron backscatter diffraction detector. Applications include strain engineering, process monitoring, detecting spatial variations, and incoming wafer inspection. Methods are 40× faster than X-ray diffraction. 0.01-0.1° accuracy enables semiconductor applications.
    Type: Grant
    Filed: June 24, 2021
    Date of Patent: May 16, 2023
    Assignee: FEI Company
    Inventors: Han Han, Libor Strakos, Thomas Hantschel, Tomas Vystavel, Clement Porret
  • Publication number: 20220412900
    Abstract: Methods and apparatus determine offcut angle of a crystalline sample using electron channeling patterns (ECPs), wherein backscattered electron intensity exhibits angular variation dependent on crystal orientation. A zone axis normal to a given crystal plane follows a circle as the sample is azimuthally rotated. On an ECP image presented with tilt angles as axes, the radius of the circle is the offcut angle of the sample. Large offcut angles are determined by a tilt technique that brings the zone axis into the ECP field of view. ECPs are produced with a scanning electron beam and a monolithic backscattered electron detector; or alternatively with a stationary electron beam and a pixelated electron backscatter diffraction detector. Applications include strain engineering, process monitoring, detecting spatial variations, and incoming wafer inspection. Methods are 40× faster than X-ray diffraction. 0.01-0.1° accuracy enables semiconductor applications.
    Type: Application
    Filed: June 24, 2021
    Publication date: December 29, 2022
    Applicant: FEI Company
    Inventors: Han Han, Libor Strakos, Thomas Hantschel, Tomas Vystavel, Clement Porret
  • Publication number: 20210049749
    Abstract: Techniques for training an artificial neural network (ANN) using simulated specimen images are described. Simulated specimen images are generated based on data models. The data models describe characteristics of a crystalline material and characteristics of one or more defect types. The data models do not include any image data. Simulated specimen images are input as training data into a training algorithm to generate an artificial neural network (ANN) for identifying defects in crystalline materials. After the ANN is trained, the ANN analyzes captured specimen images to identify defects shown therein.
    Type: Application
    Filed: October 16, 2020
    Publication date: February 18, 2021
    Applicant: FEI Company
    Inventors: Ondrej Machek, Tomá{hacek over (s)} Vystavel, Libor Strako{hacek over (s)}, Pavel Potocek
  • Patent number: 10846845
    Abstract: Techniques for training an artificial neural network (ANN) using simulated specimen images are described. Simulated specimen images are generated based on data models. The data models describe characteristics of a crystalline material and characteristics of one or more defect types. The data models do not include any image data. Simulated specimen images are input as training data into a training algorithm to generate an artificial neural network (ANN) for identifying defects in crystalline materials. After the ANN is trained, the ANN analyzes captured specimen images to identify defects shown therein.
    Type: Grant
    Filed: July 25, 2018
    Date of Patent: November 24, 2020
    Assignee: FEI Company
    Inventors: Ond{hacek over (r)}ej Machek, Tomá{hacek over (s)} Vystav{hacek over (e)}l, Libor Strako{hacek over (s)}, Pavel Potocek
  • Publication number: 20200034956
    Abstract: Techniques for training an artificial neural network (ANN) using simulated specimen images are described. Simulated specimen images are generated based on data models. The data models describe characteristics of a crystalline material and characteristics of one or more defect types. The data models do not include any image data. Simulated specimen images are input as training data into a training algorithm to generate an artificial neural network (ANN) for identifying defects in crystalline materials. After the ANN is trained, the ANN analyzes captured specimen images to identify defects shown therein.
    Type: Application
    Filed: July 25, 2018
    Publication date: January 30, 2020
    Applicant: FEI Company
    Inventors: Ondrej Machek, Tomás Vystavêl, Libor Strakos, Pavel Potocek
  • Patent number: 10504689
    Abstract: A substrate is alignable for ion beam milling or other inspection or processing by obtaining an electron channeling pattern (ECP) or other electron beam backscatter pattern from the substrate based on electron beam backscatter from the substrate. The ECP is a function of substrate crystal orientation and tilt angles associated with ECP pattern values at or near a maximum, minimum, or midpoint are used to determine substrate tilt. Such tilt is then compensated or eliminated using a tilt stage coupled the substrate, or by adjusting an ion beam axis. In typical examples, circuit substrate “chunks” are aligned for ion beam milling to reveal circuit features for evaluation of circuit processing.
    Type: Grant
    Filed: December 21, 2017
    Date of Patent: December 10, 2019
    Assignee: FEI Company
    Inventors: Tomá{hacek over (s)} Vystav{hacek over (e)}l, Libor Strako{hacek over (s)}, Anna Prokhodtseva, Jaromir Va{hacek over (n)}hara, Jaroslav Stárek
  • Publication number: 20190198287
    Abstract: A substrate is alignable for ion beam milling or other inspection or processing by obtaining an electron channeling pattern (ECP) or other electron beam backscatter pattern from the substrate based on electron beam backscatter from the substrate. The ECP is a function of substrate crystal orientation and tilt angles associated with ECP pattern values at or near a maximum, minimum, or midpoint are used to determine substrate tilt. Such tilt is then compensated or eliminated using a tilt stage coupled the substrate, or by adjusting an ion beam axis. In typical examples, circuit substrate “chunks” are aligned for ion beam milling to reveal circuit features for evaluation of circuit processing.
    Type: Application
    Filed: December 21, 2017
    Publication date: June 27, 2019
    Applicant: FEI Company
    Inventors: Tomás Vystavel, Libor Strakos, Anna Prokhodtseva, Jaromír Vanhara, Jaroslav Stárek