Patents by Inventor Ravindra KOMPELLA

Ravindra KOMPELLA 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: 11978273
    Abstract: Systems and techniques are provided for automatically analyzing and processing domain-specific image artifacts and document images. A process can include obtaining a plurality of document images comprising visual representations of structured text. An OCR-free machine learning model can be trained to automatically extract text data values from different types or classes of document image, based on using a corresponding region of interest (ROI) template corresponding to the structure of the document image type for at least initial rounds of annotations and training. The extracted information included in an inference prediction of the trained OCR-free machine learning model can be reviewed and validated or corrected correspondingly before being written to a database for use by one or more downstream analytical tasks.
    Type: Grant
    Filed: November 10, 2023
    Date of Patent: May 7, 2024
    Assignee: 32Health Inc.
    Inventors: Deepak Ramaswamy, Ravindra Kompella, Shaju Puthussery
  • Patent number: 11308614
    Abstract: A set of enhancements to further improve the performance of deep learning artificial intelligence algorithms trained to detect and localize colon polyps. The enhancements spanning training data mining efficiencies and automation, training data augmentation, early detection of polyps enable a more performant colon polyp detection solution for use on colonoscopy procedure recordings or live procedures in endoscopy centers.
    Type: Grant
    Filed: September 14, 2020
    Date of Patent: April 19, 2022
    Inventors: Vineet Sachdev, Ravindra Kompella, Hamed Pirsiavash
  • Patent number: 11212465
    Abstract: An endoscopy video feature enhancement platform (EVFEP) is connected to the output of any type endoscope system, and inputs and captures the output video. The video is visually augmented live with indicators of possible polyp detection and localization, polyp attributes, and procedure metrics, based on the collective learning of the output results of many different types of endoscopy systems on a large scale. An artificial intelligence model is trained on confirmed polyp detection previously determined by this and other EVFEP devices used with many different types of endoscope systems on a large scale. Augmented video, images and automatically generated short video clips of key procedure segments are passed to a reporting system, and supplemented with meta data.
    Type: Grant
    Filed: July 1, 2020
    Date of Patent: December 28, 2021
    Assignee: ENDOVIGILANT INC
    Inventors: Vineet Sachdev, Ravindra Kompella, Om P. Chaurasia, H. David Helsley, Jr.
  • Publication number: 20210133964
    Abstract: A set of enhancements to further improve the performance of deep learning artificial intelligence algorithms trained to detect and localize colon polyps. The enhancements spanning training data mining efficiencies and automation, training data augmentation, early detection of polyps enable a more performant colon polyp detection solution for use on colonoscopy procedure recordings or live procedures in endoscopy centers.
    Type: Application
    Filed: September 14, 2020
    Publication date: May 6, 2021
    Applicant: EndoVigilant Inc.
    Inventors: Vineet SACHDEV, Ravindra KOMPELLA, Hamed PIRSIAVASH
  • Patent number: 10841514
    Abstract: An endoscopy video feature enhancement platform (EVFEP) is connected to the output of any type endoscope system, and inputs and captures the output video. The video is visually augmented live with indicators of possible polyp detection and localization, polyp attributes, and procedure metrics, based on the collective learning of the output results of many different types of endoscopy systems on a large scale. An artificial intelligence model is trained on confirmed polyp detection previously determined by this and other EVFEP devices used with many different types of endoscope systems on a large scale. Augmented video, images and automatically generated short video clips of key procedure segments are passed to a reporting system, and supplemented with meta data.
    Type: Grant
    Filed: March 20, 2019
    Date of Patent: November 17, 2020
    Assignee: EndoVigilant Inc
    Inventors: Vineet Sachdev, Ravindra Kompella, Om P. Chaurasia, H. David Helsley, Jr.
  • Publication number: 20200336679
    Abstract: An endoscopy video feature enhancement platform (EVFEP) is connected to the output of any type endoscope system, and inputs and captures the output video. The video is visually augmented live with indicators of possible polyp detection and localization, polyp attributes, and procedure metrics, based on the collective learning of the output results of many different types of endoscopy systems on a large scale. An artificial intelligence model is trained on confirmed polyp detection previously determined by this and other EVFEP devices used with many different types of endoscope systems on a large scale. Augmented video, images and automatically generated short video clips of key procedure segments are passed to a reporting system, and supplemented with meta data.
    Type: Application
    Filed: July 1, 2020
    Publication date: October 22, 2020
    Applicant: EndoVigilant Inc
    Inventors: Vineet SACHDEV, Ravindra KOMPELLA, Om P. CHAURASIA, H. David HELSLEY, JR.
  • Publication number: 20190297276
    Abstract: An endoscopy video feature enhancement platform (EVFEP) is connected to the output of any type endoscope system, and inputs and captures the output video. The video is visually augmented live with indicators of possible polyp detection and localization, polyp attributes, and procedure metrics, based on the collective learning of the output results of many different types of endoscopy systems on a large scale. An artificial intelligence model is trained on confirmed polyp detection previously determined by this and other EVFEP devices used with many different types of endoscope systems on a large scale. Augmented video, images and automatically generated short video clips of key procedure segments are passed to a reporting system, and supplemented with meta data.
    Type: Application
    Filed: March 20, 2019
    Publication date: September 26, 2019
    Applicant: EndoVigilant, LLC
    Inventors: Vineet SACHDEV, Ravindra KOMPELLA, Om P. CHAURASIA, H. David HELSEY, JR.