Patents by Inventor Mark Alan Peot

Mark Alan Peot 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: 20220383107
    Abstract: A method for stabilizing disrupted neural signals received by a brain-computer interface (BCI), where a translation model is trained on a clean and disrupted dataset and is used to translate a disrupted signal to a clean signal. The clean dataset is based on the data that is received the same day the BCI is calibrated and the disrupted dataset is based on data received the same day that the model is trained. Based on the variation in daily signal disruption, the training model is retrained each day and a new translation model is applied to a disrupted dataset.
    Type: Application
    Filed: May 12, 2022
    Publication date: December 1, 2022
    Inventors: Stephen B. Simons, Mark Alan Peot, Thomas Stephens, Jon Cafaro, Ryan MacRae
  • Patent number: 8019703
    Abstract: Bayesian super-resolution techniques fuse multiple low resolution images (possibly from multiple bands) to infer a higher resolution image. The super-resolution and fusion concepts are portable to a wide variety of sensors and environmental models. The procedure is model-based inference of super-resolved information. In this approach, both the point spread function of the sub-sampling process and the multi-frame registration parameters are optimized simultaneously in order to infer an optimal estimate of the super-resolved imagery. The procedure involves a significant number of improvements, among them, more accurate likelihood estimates and a more accurate, efficient, and stable optimization procedure.
    Type: Grant
    Filed: March 10, 2009
    Date of Patent: September 13, 2011
    Assignee: Teledyne Licensing, LLC
    Inventors: Mark Alan Peot, Mario Aguilar
  • Publication number: 20090285500
    Abstract: Bayesian super-resolution techniques fuse multiple low resolution images (possibly from multiple bands) to infer a higher resolution image. The super-resolution and fusion concepts are portable to a wide variety of sensors and environmental models. The procedure is model-based inference of super-resolved information. In this approach, both the point spread function of the sub-sampling process and the multi-frame registration parameters are optimized simultaneously in order to infer an optimal estimate of the super-resolved imagery. The procedure involves a significant number of improvements, among them, more accurate likelihood estimates and a more accurate, efficient, and stable optimization procedure.
    Type: Application
    Filed: March 10, 2009
    Publication date: November 19, 2009
    Inventors: Mark Alan Peot, Mario Aguilar
  • Patent number: 7523078
    Abstract: Bayesian super-resolution techniques fuse multiple low resolution images (possibly from multiple bands) to infer a higher resolution image. The super-resolution and fusion concepts are portable to a wide variety of sensors and environmental models. The procedure is model-based inference of super-resolved information. In this approach, both the point spread function of the sub-sampling process and the multi-frame registration parameters are optimized simultaneously in order to infer an optimal estimate of the super-resolved imagery. The procedure involves a significant number of improvements, among them, more accurate likelihood estimates and a more accurate, efficient, and stable optimization procedure.
    Type: Grant
    Filed: September 30, 2005
    Date of Patent: April 21, 2009
    Assignee: Rockwell Scientific Licensing, LLC
    Inventors: Mark Alan Peot, Mario Aguilar