Patents by Inventor Tianhao ZHAO

Tianhao ZHAO 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).

  • Publication number: 20240176206
    Abstract: A metrology system may include an illumination source to generate an illumination beam and an illumination sub-system to direct the illumination beam to a sample with an inversion-symmetric substrate and one or more films disposed on the inversion-symmetric substrate. The system may further include a filter configured to block a wavelength of the illumination beam and pass a wavelength associated with a second harmonic of the illumination beam and a detector to capture second harmonic generation (SHG) light. The system may further include a controller to receive metrology data from the detector associated with the SHG light from with an interface between the inversion-symmetric substrate and the one or more films and generate one or more metrology measurements associated with the one or more films based on the metrology data.
    Type: Application
    Filed: March 1, 2023
    Publication date: May 30, 2024
    Inventors: Qiang Zhao, Ming Di, Xi Chen, Shova Subedi, Tianhao Zhang
  • Publication number: 20240177301
    Abstract: A method of testing an impedance-sensitive system with a switching device, wherein the method comprises: switching the disconnecting device into the on-state configured to permit transmission of energy via the coil; implementing a first measurement with the impedance-sensitive system; switching the disconnecting device into the off-state configured to permit damping of the external positioning signal that couples into the coil so as to reduce the undesirable oscillations of the coil; implementing a second measurement with the impedance-sensitive system; performing a comparison of the first measurement and the second measurement; performing a verification of the comparison with a target specification; and displaying a correct function and/or a malfunction depending on the verification.
    Type: Application
    Filed: July 26, 2023
    Publication date: May 30, 2024
    Inventors: Joel Haskin SALTZ, Tahsin M. KURC, Yi GAO, Wei ZHU, Si WEN, Tianhao ZHAO, Sampurna SHRESTHA
  • Patent number: 11957022
    Abstract: A display panel includes a first base substrate, a plurality of light sources on the first base substrate, a second base substrate opposite to the first base substrate, a light conversion structure on the second base substrate, a plurality of extinction structures on a side of the light conversion structure facing the first base substrate, a first channel formed between any two adjacent extinction structures, a plurality of first optical structures on a side of the light conversion structure facing the first base substrate, wherein the plurality of first optical structures are respectively located in the first channels each between any two adjacent extinction structures, and a filler portion between the plurality of light sources and the plurality of first optical structures. The filler portion contains a material with a refractive index greater than that of a material of the first optical structure, and the extinction structure contains light-absorbing material.
    Type: Grant
    Filed: June 25, 2021
    Date of Patent: April 9, 2024
    Assignee: BOE TECHNOLOGY GROUP CO., LTD.
    Inventors: Dejiang Zhao, Wei Huang, Yang Li, Yu Tian, Tianhao Lu, Qian Jin
  • Patent number: 11748877
    Abstract: A system associated with predicting segmentation quality of segmented objects implemented in the analysis of copious image data is disclosed. The system receives a collection of image data related to a particular type of data. The image data is segmented into segmented data portions based on an object associated with the collection of image data. Regions of interest associated with the segmented data portions are determined. The quality of segmentation of the segmented data portions is determined for respective classification of the regions of interest. A classification label is assigned to the regions of interest. Regions of interest are partitioned into sub-regions. Features associated with the sub-regions of the segmented data portions are determined. A training dataset is generated based on the determined features associated with the sub-regions in order to train a classification model based on a predetermined threshold value.
    Type: Grant
    Filed: May 10, 2018
    Date of Patent: September 5, 2023
    Assignee: The Research Foundation for The State University of New York
    Inventors: Joel Haskin Saltz, Tahsin M. Kurc, Yi Gao, Wei Zhu, Si Wen, Tianhao Zhao, Sampurna Shrestha
  • Patent number: 11164312
    Abstract: A system associated with quantifying a density level of tumor-infiltrating lymphocytes, based on prediction of reconstructed TIL information associated with tumoral tissue image data during pathology analysis of the tissue image data is disclosed. The system receives digitized diagnostic and stained whole-slide image data related to tissue of a particular type of tumoral data. Defined are regions of interest that represents a portion of, or a full image of the whole-slide image data. The image data is encoded into segmented data portions based on convolutional autoencoding of objects associated with the collection of image data. The density of tumor-infiltrating lymphocytes is determined of bounded segmented data portions for respective classification of the regions of interest. A classification label is assigned to the regions of interest. It is determined whether an assigned classification label is above a pre-determined threshold probability value of lymphocyte infiltrated.
    Type: Grant
    Filed: November 30, 2018
    Date of Patent: November 2, 2021
    Assignees: The Research Foundation tor the State University of New York, Board of Regents, The University of Texas System, Institute for Systems Biology
    Inventors: Joel Haskin Saltz, Tahsin Kurc, Rajarsi Gupta, Tianhao Zhao, Rebecca Batiste, Le Hou, Vu Nguyen, Dimitrios Samaras, Arvind Rao, John Van Arnam, Pankaj Singh, Alexander Lazar, Ashish Sharma, Ilya Shmulevich, Vesteinn Thorsson
  • Publication number: 20200388029
    Abstract: A system associated with quantifying a density level of tumor-infiltrating lymphocytes, based on prediction of reconstructed TIL information associated with tumoral tissue image data during pathology analysis of the tissue image data is disclosed. The system receives digitized diagnostic and stained whole-slide image data related to tissue of a particular type of tumoral data. Defined are regions of interest that represents a portion of, or a full image of the whole-slide image data. The image data is encoded into segmented data portions based on convolutional autoencoding of objects associated with the collection of image data. The density of tumor-infiltrating lymphocytes is determined of bounded segmented data portions for respective classification of the regions of interest. A classification label is assigned to the regions of interest. It is determined whether an assigned classification label is above a pre-determined threshold probability value of lymphocyte infiltrated.
    Type: Application
    Filed: November 30, 2018
    Publication date: December 10, 2020
    Inventors: Joel Haskin SALTZ, Tahsin KURC, Rajarsi GUPTA, Tianhao ZHAO, Rebecca BATISTE, Le HOU, Vu NGUYEN, Dimitrios SAMARAS, Arvind RAO, John VAN ARNAM, Pankaj SINGH, Alexander LAZAR, Ashish SHARMA, Ilya SHMULEVICH, Vesteinn THORSSON
  • Publication number: 20200126207
    Abstract: A system associated with predicting segmentation quality of segmented objects implemented in the analysis of copious image data is disclosed. The system receives a collection of image data related to a particular type of data. The image data is segmented into segmented data portions based on an object associated with the collection of image data. Regions of interest associated with the segmented data portions are determined. The quality of segmentation of the segmented data portions is determined for respective classification of the regions of interest. A classification label is assigned to the regions of interest. Regions of interest are partitioned into sub-regions. Features associated with the sub-regions of the segmented data portions are determined. A training dataset is generated based on the determined features associated with the sub-regions in order to train a classification model based on a predetermined threshold value.
    Type: Application
    Filed: May 10, 2018
    Publication date: April 23, 2020
    Inventors: Joel Haskin SALTZ, Tashin M. KURC, Yi GAO, Wei ZHU, SI WEN, Tianhao ZHAO, Sainpurna SHRESTHA