Patents by Inventor Garrett T. Kenyon

Garrett T. Kenyon 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: 9477901
    Abstract: An approach to detecting objects in an image dataset may combine texture/color detection, shape/contour detection, and/or motion detection using sparse, generative, hierarchical models with lateral and top-down connections. A first independent representation of objects in an image dataset may be produced using a color/texture detection algorithm. A second independent representation of objects in the image dataset may be produced using a shape/contour detection algorithm. A third independent representation of objects in the image dataset may be produced using a motion detection algorithm. The first, second, and third independent representations may then be combined into a single coherent output using a combinatorial algorithm.
    Type: Grant
    Filed: July 22, 2015
    Date of Patent: October 25, 2016
    Assignee: Los Alamos National Security, LLC
    Inventors: Dylan M. Paiton, Garrett T. Kenyon, Steven P. Brumby, Peter F. Schultz, John S. George
  • Publication number: 20150325007
    Abstract: An approach to detecting objects in an image dataset may combine texture/color detection, shape/contour detection, and/or motion detection using sparse, generative, hierarchical models with lateral and top-down connections. A first independent representation of objects in an image dataset may be produced using a color/texture detection algorithm. A second independent representation of objects in the image dataset may be produced using a shape/contour detection algorithm. A third independent representation of objects in the image dataset may be produced using a motion detection algorithm. The first, second, and third independent representations may then be combined into a single coherent output using a combinatorial algorithm.
    Type: Application
    Filed: July 22, 2015
    Publication date: November 12, 2015
    Inventors: Dylan M. Paiton, Garrett T. Kenyon, Steven P. Brumby, Peter F. Schultz, John S. George
  • Patent number: 9152888
    Abstract: A contour/shape detection model may use relatively simple and efficient kernels to detect target edges in an object within an image or video. A co-occurrence probability may be calculated for two or more edge features in an image or video using an object definition. Edge features may be differentiated between in response to measured contextual support, and prominent edge features may be extracted based on the measured contextual support. The object may then be identified based on the extracted prominent edge features.
    Type: Grant
    Filed: September 13, 2013
    Date of Patent: October 6, 2015
    Assignee: Los Alamos National Security, LLC
    Inventors: Garrett T. Kenyon, Steven P. Brumby, John S. George, Dylan M. Paiton, Peter F. Schultz
  • Patent number: 9152881
    Abstract: Approaches for deciding what individuals in a population of visual system “neurons” are looking for using sparse overcomplete feature dictionaries are provided. A sparse overcomplete feature dictionary may be learned for an image dataset and a local sparse representation of the image dataset may be built using the learned feature dictionary. A local maximum pooling operation may be applied on the local sparse representation to produce a translation-tolerant representation of the image dataset. An object may then be classified and/or clustered within the translation-tolerant representation of the image dataset using a supervised classification algorithm and/or an unsupervised clustering algorithm.
    Type: Grant
    Filed: September 13, 2013
    Date of Patent: October 6, 2015
    Assignee: Los Alamos National Security, LLC
    Inventors: Steven P. Brumby, Luis Bettencourt, Garrett T. Kenyon, Rick Chartrand, Brendt Wohlberg
  • Patent number: 9092692
    Abstract: An approach to detecting objects in an image dataset may combine texture/color detection, shape/contour detection, and/or motion detection using sparse, generative, hierarchical models with lateral and top-down connections. A first independent representation of objects in an image dataset may be produced using a color/texture detection algorithm. A second independent representation of objects in the image dataset may be produced using a shape/contour detection algorithm. A third independent representation of objects in the image dataset may be produced using a motion detection algorithm. The first, second, and third independent representations may then be combined into a single coherent output using a combinatorial algorithm.
    Type: Grant
    Filed: September 13, 2013
    Date of Patent: July 28, 2015
    Assignee: Los Alamos National Security, LLC
    Inventors: Dylan M. Paiton, Garrett T. Kenyon, Steven P. Brumby, Peter F. Schultz, John S. George
  • Publication number: 20140072208
    Abstract: A contour/shape detection model may use relatively simple and efficient kernels to detect target edges in an object within an image or video. A co-occurrence probability may be calculated for two or more edge features in an image or video using an object definition. Edge features may be differentiated between in response to measured contextual support, and prominent edge features may be extracted based on the measured contextual support. The object may then be identified based on the extracted prominent edge features.
    Type: Application
    Filed: September 13, 2013
    Publication date: March 13, 2014
    Applicant: Los Alamos National Security, LLC
    Inventors: Garrett T. Kenyon, Steven P. Brumby, John S. George, Dylan M. Paiton, Peter F. Schultz
  • Publication number: 20140072213
    Abstract: An approach to detecting objects in an image dataset may combine texture/color detection, shape/contour detection, and/or motion detection using sparse, generative, hierarchical models with lateral and top-down connections. A first independent representation of objects in an image dataset may be produced using a color/texture detection algorithm. A second independent representation of objects in the image dataset may be produced using a shape/contour detection algorithm. A third independent representation of objects in the image dataset may be produced using a motion detection algorithm. The first, second, and third independent representations may then be combined into a single coherent output using a combinatorial algorithm.
    Type: Application
    Filed: September 13, 2013
    Publication date: March 13, 2014
    Applicant: Los Alamos National Security, LLC
    Inventors: Dylan M. Paiton, Garrett T. Kenyon, Steven P. Brumby, Peter F. Schultz, John S. George
  • Publication number: 20140072209
    Abstract: Approaches for deciding what individuals in a population of visual system “neurons” are looking for using sparse overcomplete feature dictionaries are provided. A sparse overcomplete feature dictionary may be learned for an image dataset and a local sparse representation of the image dataset may be built using the learned feature dictionary. A local maximum pooling operation may be applied on the local sparse representation to produce a translation-tolerant representation of the image dataset. An object may then be classified and/or clustered within the translation-tolerant representation of the image dataset using a supervised classification algorithm and/or an unsupervised clustering algorithm.
    Type: Application
    Filed: September 13, 2013
    Publication date: March 13, 2014
    Applicant: Los Alamos National Security, LLC
    Inventors: Steven P. Brumby, Luis Bettencourt, Garrett T. Kenyon, Rick Chartrand, Brendt Wohlberg