Patents by Inventor Pulkit Gera

Pulkit Gera 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: 11930303
    Abstract: Systems and techniques for automatic digital parameter adjustment are described that leverage insights learned from an image set to automatically predict parameter values for an input item of digital visual content. To do so, the automatic digital parameter adjustment techniques described herein captures visual and contextual features of digital visual content to determine balanced visual output in a range of visual scenes and settings. The visual and contextual features of digital visual content are used to train a parameter adjustment model through machine learning techniques that captures feature patterns and interactions. The parameter adjustment model exploits these feature interactions to determine visually pleasing parameter values for an input item of digital visual content. The predicted parameter values are output, allowing further adjustment to the parameter values.
    Type: Grant
    Filed: November 15, 2021
    Date of Patent: March 12, 2024
    Assignee: Adobe Inc.
    Inventors: Pulkit Gera, Oliver Wang, Kalyan Krishna Sunkavalli, Elya Shechtman, Chetan Nanda
  • Publication number: 20220182588
    Abstract: Systems and techniques for automatic digital parameter adjustment are described that leverage insights learned from an image set to automatically predict parameter values for an input item of digital visual content. To do so, the automatic digital parameter adjustment techniques described herein captures visual and contextual features of digital visual content to determine balanced visual output in a range of visual scenes and settings. The visual and contextual features of digital visual content are used to train a parameter adjustment model through machine learning techniques that captures feature patterns and interactions. The parameter adjustment model exploits these feature interactions to determine visually pleasing parameter values for an input item of digital visual content. The predicted parameter values are output, allowing further adjustment to the parameter values.
    Type: Application
    Filed: November 15, 2021
    Publication date: June 9, 2022
    Applicant: Adobe Inc.
    Inventors: Pulkit Gera, Oliver Wang, Kalyan Krishna Sunkavalli, Elya Shechtman, Chetan Nanda
  • Patent number: 11178368
    Abstract: Systems and techniques for automatic digital parameter adjustment are described that leverage insights learned from an image set to automatically predict parameter values for an input item of digital visual content. To do so, the automatic digital parameter adjustment techniques described herein captures visual and contextual features of digital visual content to determine balanced visual output in a range of visual scenes and settings. The visual and contextual features of digital visual content are used to train a parameter adjustment model through machine learning techniques that captures feature patterns and interactions. The parameter adjustment model exploits these feature interactions to determine visually pleasing parameter values for an input item of digital visual content. The predicted parameter values are output, allowing further adjustment to the parameter values.
    Type: Grant
    Filed: November 26, 2019
    Date of Patent: November 16, 2021
    Assignee: Adobe Inc.
    Inventors: Pulkit Gera, Oliver Wang, Kalyan Krishna Sunkavalli, Elya Shechtman, Chetan Nanda
  • Patent number: 11158090
    Abstract: This disclosure involves training generative adversarial networks to shot-match two unmatched images in a context-sensitive manner. For example, aspects of the present disclosure include accessing a trained generative adversarial network including a trained generator model and a trained discriminator model. A source image and a reference image may be inputted into the generator model to generate a modified source image. The modified source image and the reference image may be inputted into the discriminator model to determine a likelihood that the modified source image is color-matched with the reference image. The modified source image may be outputted as a shot-match with the reference image in response to determining, using the discriminator model, that the modified source image and the reference image are color-matched.
    Type: Grant
    Filed: November 22, 2019
    Date of Patent: October 26, 2021
    Assignee: Adobe Inc.
    Inventors: Tharun Mohandoss, Pulkit Gera, Oliver Wang, Kartik Sethi, Kalyan Sunkavalli, Elya Shechtman, Chetan Nanda
  • Publication number: 20210160466
    Abstract: Systems and techniques for automatic digital parameter adjustment are described that leverage insights learned from an image set to automatically predict parameter values for an input item of digital visual content. To do so, the automatic digital parameter adjustment techniques described herein captures visual and contextual features of digital visual content to determine balanced visual output in a range of visual scenes and settings. The visual and contextual features of digital visual content are used to train a parameter adjustment model through machine learning techniques that captures feature patterns and interactions. The parameter adjustment model exploits these feature interactions to determine visually pleasing parameter values for an input item of digital visual content. The predicted parameter values are output, allowing further adjustment to the parameter values.
    Type: Application
    Filed: November 26, 2019
    Publication date: May 27, 2021
    Applicant: Adobe Inc.
    Inventors: Pulkit Gera, Oliver Wang, Kalyan Krishna Sunkavalli, Elya Shechtman, Chetan Nanda
  • Publication number: 20210158570
    Abstract: This disclosure involves training generative adversarial networks to shot-match two unmatched images in a context-sensitive manner. For example, aspects of the present disclosure include accessing a trained generative adversarial network including a trained generator model and a trained discriminator model. A source image and a reference image may be inputted into the generator model to generate a modified source image. The modified source image and the reference image may be inputted into the discriminator model to determine a likelihood that the modified source image is color-matched with the reference image. The modified source image may be outputted as a shot-match with the reference image in response to determining, using the discriminator model, that the modified source image and the reference image are color-matched.
    Type: Application
    Filed: November 22, 2019
    Publication date: May 27, 2021
    Inventors: Tharun Mohandoss, Pulkit Gera, Oliver Wang, Kartik Sethi, Kalyan Sunkavalli, Elya Shechtman, Chetan Nanda