Patents by Inventor Walter Parish Gililland, JR.

Walter Parish Gililland, JR. 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: 11544492
    Abstract: A learning automaton can be trained to merge data from input data streams, optionally with different data rates, into a single output data stream. The learning automaton can learn over time from the input data streams. The input data streams can be low-pass filtered to suppress data having frequencies greater than a time-varying cutoff frequency. Initially, the cutoff frequency can be relatively low, so that the effective data rates of the input data streams are all equal. This can ensure that initially, high data-rate data does not overwhelm low data-rate data. As the learning automaton learns, an entropy of the learning automaton changes more slowly, and the cutoff frequency is increased over time. When the entropy of the learning automaton has stabilized, the training is completed, and the cutoff frequency can be large enough to pass all the input data streams, unfiltered, to the learning automaton.
    Type: Grant
    Filed: January 18, 2019
    Date of Patent: January 3, 2023
    Assignee: Raytheon Company
    Inventors: Marcus Alton Teter, Natalie Rae Plotkin, Scott Allen Imhoff, Walter Parish Gililland, Jr., Austin Jay Jorgensen
  • Publication number: 20190228256
    Abstract: A learning automaton can be trained to merge data from input data streams, optionally with different data rates, into a single output data stream. The learning automaton can learn over time from the input data streams. The input data streams can be low-pass filtered to suppress data having frequencies greater than a time-varying cutoff frequency. Initially, the cutoff frequency can be relatively low, so that the effective data rates of the input data streams are all equal. This can ensure that initially, high data-rate data does not overwhelm low data-rate data. As the learning automaton learns, an entropy of the learning automaton changes more slowly, and the cutoff frequency is increased over time. When the entropy of the learning automaton has stabilized, the training is completed, and the cutoff frequency can be large enough to pass all the input data streams, unfiltered, to the learning automaton.
    Type: Application
    Filed: January 18, 2019
    Publication date: July 25, 2019
    Inventors: Marcus Alton Teter, Natalie Rae Plotkin, Scott Allen Imhoff, Walter Parish Gililland, JR., Austin Jay Jorgensen