Patents by Inventor Gopalkrishna Balkrishna Veni

Gopalkrishna Balkrishna Veni 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: 12159475
    Abstract: A simplified handwriting recognition approach includes a first network comprising convolutional neural network comprising one or more convolutional layers and one or more max-pooling layers. The first network receives an input image of handwriting and outputs an embedding based thereon. A second network comprises a network of cascaded convolutional layers including one or more subnetworks configured to receive an embedding of a handwriting image and output one or more character predictions. The subnetworks are configured to downsample and flatten the embedding to a feature map and then a vector before passing the vector to a dense neural network for character prediction. Certain subnetworks are configured to concatenate an input embedding with an upsampled version of the feature map.
    Type: Grant
    Filed: December 9, 2021
    Date of Patent: December 3, 2024
    Assignee: Ancestry.com Operations Inc.
    Inventors: Raunak Dey, Gopalkrishna Balkrishna Veni, Masaki Stanley Fujimoto, Yen-Yun Yu, Jinsol Lee
  • Patent number: 12026982
    Abstract: Systems and methods for handwriting recognition using language modeling facilitate improved results by using a trained language model to improve results from a handwriting recognition machine learning model. The language model may be a character-based language model trained on a dataset pertinent to field values on which the handwriting recognition model is to be used. A loss prediction module may be trained with the handwriting recognition model and/or the language model and used to determine whether a prediction from the handwriting recognition model should be refined by passing the prediction through the trained language model.
    Type: Grant
    Filed: October 28, 2021
    Date of Patent: July 2, 2024
    Assignee: Ancestry.com Operations Inc.
    Inventors: Jinsol Lee, Gopalkrishna Balkrishna Veni, Masaki Stanley Fujimoto, Yen-Yun Yu
  • Publication number: 20240012844
    Abstract: Disclosed herein relates to a method that analyzes the sentiment of user feedback for a genealogical system and identifies key phrases that may relate to novel themes in the user feedback. Sentiment analysis and novel theme prediction systems, methods, and computer-program products are described. Sentiment analysis of user feedback may include dividing user-generated unstructured text files into sections. The method classifies each section to an aspect of the genealogical system from a predetermined list of aspects monitored by the genealogical system. The method inputs the text belonging to the classified section to a supervised machine learning model and determines a sentiment associated with the classified section. In other embodiments, a method generates embedding vectors representing survey responses from users of a genealogical system. The method extracts a subset of survey responses having embedding vectors grouped into one cluster. The method extracts key phrases that may indicate a novel theme.
    Type: Application
    Filed: July 7, 2023
    Publication date: January 11, 2024
    Inventors: Suraj Subraveti, Maria Antonia Fabiano, Gopalkrishna Balkrishna Veni, Yingrui Yang
  • Publication number: 20230325373
    Abstract: Systems and methods for importing documents are described. An input image is received and preprocessed. OCR and/or page segmentation and chapter detection are performed. Special-case processing is performed for lists, tables, free text, and other categories. Anaphora analysis, stemming, lemmatization, and relationship detection are performed. A genealogical tree is generated, augmented, or merged based on the extracted entities and relationships.
    Type: Application
    Filed: March 15, 2023
    Publication date: October 12, 2023
    Inventors: Jack Reese, Luca Lugini, Yingrui Yang, Simon Chu, Gopalkrishna Balkrishna Veni
  • Publication number: 20230142630
    Abstract: Methods, systems, and computer-program products for image enhancement include receiving an image and optionally a user request, classify the image, crop image components of the image, restore cropped image components of the image, colorized restored image components, and reconstruct the image from the colorized, restored image components and other components. The other components may include text components that are restored in a separate treatment pipeline.
    Type: Application
    Filed: November 10, 2022
    Publication date: May 11, 2023
    Inventors: Michael Benjamin Brodie, Gopalkrishna Balkrishna Veni, Jack Reese, Azadeh Moghtaderi, Randon Morford
  • Publication number: 20220189188
    Abstract: A simplified handwriting recognition approach includes a first network comprising convolutional neural network comprising one or more convolutional layers and one or more max-pooling layers. The first network receives an input image of handwriting and outputs an embedding based thereon. A second network comprises a network of cascaded convolutional layers including one or more subnetworks configured to receive an embedding of a handwriting image and output one or more character predictions. The subnetworks are configured to downsample and flatten the embedding to a feature map and then a vector before passing the vector to a dense neural network for character prediction. Certain subnetworks are configured to concatenate an input embedding with an upsampled version of the feature map.
    Type: Application
    Filed: December 9, 2021
    Publication date: June 16, 2022
    Applicant: Ancestry.com Operations Inc.
    Inventors: Raunak Dey, Gopalkrishna Balkrishna Veni, Masaki Stanley Fujimoto, Yen-Yun Yu, Jinsol Lee
  • Publication number: 20220138453
    Abstract: Systems and methods for handwriting recognition using language modeling facilitate improved results by using a trained language model to improve results from a handwriting recognition machine learning model. The language model may be a character-based language model trained on a dataset pertinent to field values on which the handwriting recognition model is to be used. A loss prediction module may be trained with the handwriting recognition model and/or the language model and used to determine whether a prediction from the handwriting recognition model should be refined by passing the prediction through the trained language model.
    Type: Application
    Filed: October 28, 2021
    Publication date: May 5, 2022
    Applicant: Ancestry.com Operations Inc.
    Inventors: Jinsol Lee, Gopalkrishna Balkrishna Veni, Masaki Stanley Fujimoto, Yen-Yun Yu