Patents by Inventor Denis Garagic

Denis Garagic 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: 11378646
    Abstract: The discriminability of an RF fingerprint is increased by “abstracting,” “enhancing,” and “reconstructing” a digital signal before it is transmitted, where the abstraction is a reversible nonlinear compression, the enhancement is a modification of the abstracted data, and the reconstruction is a mapping-back of the abstraction. During a training phase, for each individual RF transmitter, RF fingerprints are analyzed and candidate enhancements are modified until a successful enhancement is identified that provides satisfactory discriminability improvement with minimal signal degradation. The successful enhancement is implemented in the RF transmitter, and the RF fingerprint is communicated to receivers for subsequent detection and verification. Reinforcement learning can direct modifications to the candidate enhancements. The abstraction can implement a deep generative model such as an auto-encoder.
    Type: Grant
    Filed: August 13, 2019
    Date of Patent: July 5, 2022
    Assignee: BAE Systems Information and Electronic Systems Integration Inc.
    Inventors: Scott A Kuzdeba, Amit Bhatia, David J. Couto, Denis Garagic, John A. Tranquilli, Jr.
  • Patent number: 11087228
    Abstract: A generic online, probabilistic, approximate computational inference model for learning-based data processing is presented. The model includes detection, feature production and classification steps. It employs Bayesian Probabilistic Models (BPMs) to characterize complex real-world behaviors under uncertainty. The BPM learning is incremental. Online learning enables BPM adaptation to new data. The available data drives BPM complexity (e.g., number of states) accommodating spatial and temporal ambiguities, occlusions, environmental clutter, and large inter-domain data variability. Generic Sequential Bayesian Inference (GSBI) efficiently operates over BPMs to process streaming or forensic data. Deep Belief Networks (DBNs) learn feature representations from data. Examples include model applications for streaming imagery (e.g., video) and automatic target recognition (ATR).
    Type: Grant
    Filed: August 12, 2016
    Date of Patent: August 10, 2021
    Assignee: BAE Systems Information and Electronic Systems Integration Inc.
    Inventors: Denis Garagic, Bradley J Rhodes
  • Publication number: 20210048507
    Abstract: The discriminability of an RF fingerprint is increased by “abstracting,” “enhancing,” and “reconstructing” a digital signal before it is transmitted, where the abstraction is a reversible nonlinear compression, the enhancement is a modification of the abstracted data, and the reconstruction is a mapping-back of the abstraction. During a training phase, for each individual RF transmitter, RF fingerprints are analyzed and candidate enhancements are modified until a successful enhancement is identified that provides satisfactory discriminability improvement with minimal signal degradation. The successful enhancement is implemented in the RF transmitter, and the RF fingerprint is communicated to receivers for subsequent detection and verification. Reinforcement learning can direct modifications to the candidate enhancements. The abstraction can implement a deep generative model such as an auto-encoder.
    Type: Application
    Filed: August 13, 2019
    Publication date: February 18, 2021
    Applicant: BAE SYSTEMS Information and Electronic Systems Integration Inc.
    Inventors: Scott A. Kuzdeba, Amit Bhatia, David J. Couto, Denis Garagic, John A. Tranquilli, JR.
  • Publication number: 20170161638
    Abstract: A generic online, probabilistic, approximate computational inference model for learning-based data processing is presented. The model includes detection, feature production and classification steps. It employs Bayesian Probabilistic Models (BPMs) to characterize complex real-world behaviors under uncertainty. The BPM learning is incremental. Online learning enables BPM adaptation to new data. The available data drives BPM complexity (e.g., number of states) accommodating spatial and temporal ambiguities, occlusions, environmental clutter, and large inter-domain data variability. Generic Sequential Bayesian Inference (GSBI) efficiently operates over BPMs to process streaming or forensic data. Deep Belief Networks (DBNs) learn feature representations from data. Examples include model applications for streaming imagery (e.g., video) and automatic target recognition (ATR).
    Type: Application
    Filed: August 12, 2016
    Publication date: June 8, 2017
    Inventors: Denis GARAGIC, Bradley J. RHODES
  • Patent number: 8103682
    Abstract: Methods and systems for text data analysis and visualization enable a user to specify a set of text data sources and visualize the content of the text data sources in an overview of salient features in the form of a network of words. A user may focus on one or more words to provide a visualization of connections specific to the focused word(s). The visualization may include clustering of relevant concepts within the network of words. Upon selection of a word, the context thereof, e.g., links to articles where the word appears, may be provided to the user. Analyzing may include textual statistical correlation models for assigning weights to words and links between words. Displaying the network of words may include a force-based network layout algorithm. Extracting clusters for display may include identifying “communities of words” as if the network of words was a social network.
    Type: Grant
    Filed: August 24, 2010
    Date of Patent: January 24, 2012
    Assignee: Icosystem Corporation
    Inventors: Pablo Funes, Elena Popovici, Paolo Gaudiano, Daphna Buchsbaum, Denis Garagic, M. Ihsan Ecemis, Eric Bonabeau, Chris Bingham
  • Publication number: 20110047455
    Abstract: Methods and systems for text data analysis and visualization enable a user to specify a set of text data sources and visualize the content of the text data sources in an overview of salient features in the form of a network of words. A user may focus on one or more words to provide a visualization of connections specific to the focused word(s). The visualization may include clustering of relevant concepts within the network of words. Upon selection of a word, the context thereof, e.g., links to articles where the word appears, may be provided to the user. Analyzing may include textual statistical correlation models for assigning weights to words and links between words. Displaying the network of words may include a force-based network layout algorithm. Extracting clusters for display may include identifying “communities of words” as if the network of words was a social network.
    Type: Application
    Filed: August 24, 2010
    Publication date: February 24, 2011
    Applicant: Icosystem Corporation
    Inventors: Pablo Funes, Elena Popovici, Paolo Gaudiano, Daphna Buchsbaum, Denis Garagic, M. Ihsan Ecemis, Chris Bingham, Eric Bonabeau
  • Patent number: 7792816
    Abstract: Methods and systems for text data analysis and visualization enable a user to specify a set of text data sources and visualize the content of the text data sources in an overview of salient features in the form of a network of words. A user may focus on one or more words to provide a visualization of connections specific to the focused word(s). The visualization may include clustering of relevant concepts within the network of words. Upon selection of a word, the context thereof, e.g., links to articles where the word appears, may be provided to the user. Analyzing may include textual statistical correlation models for assigning weights to words and links between words. Displaying the network of words may include a force-based network layout algorithm. Extracting clusters for display may include identifying “communities of words” as if the network of words was a social network.
    Type: Grant
    Filed: January 31, 2008
    Date of Patent: September 7, 2010
    Assignee: Icosystem Corporation
    Inventors: Pablo Funes, Elena Popovici, Paolo Gaudiano, Daphna Buchsbaum, Denis Garagic, M. Ihsan Ecemis, Chris Bingham, Eric Bonabeau
  • Publication number: 20090144617
    Abstract: Methods and systems for text data analysis and visualization enable a user to specify a set of text data sources and visualize the content of the text data sources in an overview of salient features in the form of a network of words. A user may focus on one or more words to provide a visualization of connections specific to the focused word(s). The visualization may include clustering of relevant concepts within the network of words. Upon selection of a word, the context thereof, e.g., links to articles where the word appears, may be provided to the user. Analyzing may include textual statistical correlation models for assigning weights to words and links between words. Displaying the network of words may include a force-based network layout algorithm. Extracting clusters for display may include identifying “communities of words” as if the network of words was a social network.
    Type: Application
    Filed: January 31, 2008
    Publication date: June 4, 2009
    Inventors: Pablo Funes, Elena Popovici, Paolo Gaudiano, Daphna Buchsbaum, Denis Garagic, M. Ihsan Ecemis, Chris Bingham, Eric Bonabeau