Patents by Inventor David Benjamin Belanger

David Benjamin Belanger 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: 20230083892
    Abstract: Methods and systems for performing black box optimization to identify an output that optimizes an objective.
    Type: Application
    Filed: February 8, 2021
    Publication date: March 16, 2023
    Inventors: David Benjamin Belanger, Georgiana Andreea Gane, Christof Angermueller, David W. Sculley, II, David Martin Dohan, Kevin Patrick Murphy, Lucy Colwell, Zelda Elaine Mariet
  • Publication number: 20220270402
    Abstract: The present disclosure provides systems and methods that perform face reconstruction based on an image of a face. In particular, one example system of the present disclosure combines a machine-learned image recognition model with a face modeler that uses a morphable model of a human's facial appearance. The image recognition model can be a deep learning model that generates an embedding in response to receipt of an image (e.g., an uncontrolled image of a face). The example system can further include a small, lightweight, translation model structurally positioned between the image recognition model and the face modeler. The translation model can be a machine-learned model that is trained to receive the embedding generated by the image recognition model and, in response, output a plurality of facial modeling parameter values usable by the face modeler to generate a model of the face.
    Type: Application
    Filed: May 16, 2022
    Publication date: August 25, 2022
    Inventors: Forrester H. Cole, Dilip Krishnan, William T. Freeman, David Benjamin Belanger
  • Publication number: 20220172055
    Abstract: Methods, systems, and apparatus, including computer programs encoded on a computer storage medium, for predicting biological functions of proteins. In one aspect, a method comprises: obtaining data defining a sequence of amino acids in a protein; processing the data defining the sequence of amino acids in the protein using a neural network, wherein: the neural network is a convolutional neural network comprising one or more dilated convolutional layers; and the neural network is configured to process the data defining the sequence of amino acids in the protein in accordance with trained parameter values of the neural network to generate a neural network output characterizing at least one predicted biological function of the sequence of amino acids in the protein; and identifying the predicted biological function of the sequence of amino acids in the protein using the neural network output.
    Type: Application
    Filed: April 10, 2020
    Publication date: June 2, 2022
    Inventors: Maxwell Bileschi, Lucy Colwell, Theodore Sanderson, David Benjamin Belanger, Jamie Alexander Smith, Drew Bryant, Mark Andrew DePristo, Brandon Carter
  • Patent number: 11335120
    Abstract: The present disclosure provides systems and methods that perform face reconstruction based on an image of a face. In particular, one example system of the present disclosure combines a machine-learned image recognition model with a face modeler that uses a morphable model of a human's facial appearance. The image recognition model can be a deep learning model that generates an embedding in response to receipt of an image (e.g., an uncontrolled image of a face). The example system can further include a small, lightweight, translation model structurally positioned between the image recognition model and the face modeler. The translation model can be a machine-learned model that is trained to receive the embedding generated by the image recognition model and, in response, output a plurality of facial modeling parameter values usable by the face modeler to generate a model of the face.
    Type: Grant
    Filed: April 24, 2020
    Date of Patent: May 17, 2022
    Assignee: GOOGLE LLC
    Inventors: Forrester H. Cole, Dilip Krishnan, William T. Freeman, David Benjamin Belanger
  • Publication number: 20200257891
    Abstract: The present disclosure provides systems and methods that perform face reconstruction based on an image of a face. In particular, one example system of the present disclosure combines a machine-learned image recognition model with a face modeler that uses a morphable model of a human's facial appearance. The image recognition model can be a deep learning model that generates an embedding in response to receipt of an image (e.g., an uncontrolled image of a face). The example system can further include a small, lightweight, translation model structurally positioned between the image recognition model and the face modeler. The translation model can be a machine-learned model that is trained to receive the embedding generated by the image recognition model and, in response, output a plurality of facial modeling parameter values usable by the face modeler to generate a model of the face.
    Type: Application
    Filed: April 24, 2020
    Publication date: August 13, 2020
    Inventors: Forrester H. Cole, Dilip Krishnan, William T. Freeman, David Benjamin Belanger
  • Patent number: 10650227
    Abstract: The present disclosure provides systems and methods that perform face reconstruction based on an image of a face. In particular, one example system of the present disclosure combines a machine-learned image recognition model with a face modeler that uses a morphable model of a human's facial appearance. The image recognition model can be a deep learning model that generates an embedding in response to receipt of an image (e.g., an uncontrolled image of a face). The example system can further include a small, lightweight, translation model structurally positioned between the image recognition model and the face modeler. The translation model can be a machine-learned model that is trained to receive the embedding generated by the image recognition model and, in response, output a plurality of facial modeling parameter values usable by the face modeler to generate a model of the face.
    Type: Grant
    Filed: September 27, 2017
    Date of Patent: May 12, 2020
    Assignee: Google LLC
    Inventors: Forrester H. Cole, Dilip Krishnan, William T. Freeman, David Benjamin Belanger
  • Publication number: 20190095698
    Abstract: The present disclosure provides systems and methods that perform face reconstruction based on an image of a face. In particular, one example system of the present disclosure combines a machine-learned image recognition model with a face modeler that uses a morphable model of a human's facial appearance. The image recognition model can be a deep learning model that generates an embedding in response to receipt of an image (e.g., an uncontrolled image of a face). The example system can further include a small, lightweight, translation model structurally positioned between the image recognition model and the face modeler. The translation model can be a machine-learned model that is trained to receive the embedding generated by the image recognition model and, in response, output a plurality of facial modeling parameter values usable by the face modeler to generate a model of the face.
    Type: Application
    Filed: September 27, 2017
    Publication date: March 28, 2019
    Inventors: Forrester H. Cole, Dilip Krishnan, William T. Freeman, David Benjamin Belanger