Patents by Inventor Howard S. Burkom

Howard S. Burkom 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: 7266484
    Abstract: Technique for early detection of localized exposure to an agent active on a biological population include collecting time series for each data type of multiple different data types. The data types are relevant for detecting exposure to the agent. For each data type multiple time series are collected for corresponding multiple locations associated with the data type. Measures of anomalous conditions are generated at the locations for each of the different data types. The measures of anomalous conditions are based on the time series and a temporal model for each data type. Cluster analysis is performed on the measures of anomalous conditions to determine an estimated location, and an estimated extent, of effects from the agent. The techniques allow a surveillance system to avoid diluting the signal of a localized outbreak over too large and area or consuming excessive resources in computing replicas for a matched filter detector.
    Type: Grant
    Filed: December 2, 2002
    Date of Patent: September 4, 2007
    Assignee: The Johns Hopkins University
    Inventors: Joseph S. Lombardo, Howard S. Burkom, Farzad Mostashari, Eugene Elbert
  • Patent number: 7249006
    Abstract: Background noise from relevant data sets, including for example over-the-counter sales data, absenteeism data, etc., is subtracted using a background estimation algorithm that outputs residual data. The effects of hypothetical anomalous events, such as a bio-terrorist attack, on the relevant data sets are modeled to create replica data. The replica data may be based on input from epidemiologists and various scenario templates including information on disease manifestation and other intelligence. The residual data and the replica data are then matched using a detector. Types of detectors include for example adaptive matched-filter detectors, change detectors and Bayesian Inference Networks. An alarm is triggered if a real anomalous event similar to a hypothetical anomalous event is detected. A Geographical Information System (GIS) may be used to display data from individual zip codes.
    Type: Grant
    Filed: March 23, 2001
    Date of Patent: July 24, 2007
    Assignee: The Johns Hopkins University
    Inventors: Joseph S. Lombardo, Fernando J. Pineda, Howard S. Burkom, Bruce K. Newhall, Rashid A. Chotani, Richard A. Wojcik, Wayne A. Loschen
  • Publication number: 20040078146
    Abstract: Technique for early detection of localized exposure to an agent active on a biological population include collecting time series for each data type of multiple different data types. The data types are relevant for detecting exposure to the agent. For each data type multiple time series are collected for corresponding multiple locations associated with the data type. Measures of anomalous conditions are generated at the locations for each of the different data types. The measures of anomalous conditions are based on the time series and a temporal model for each data type. Cluster analysis is performed on the measures of anomalous conditions to determine an estimated location, and an estimated extent, of effects from the agent. The techniques allow a surveillance system to avoid diluting the signal of a localized outbreak over too large and area or consuming excessive resources in computing replicas for a matched filter detector.
    Type: Application
    Filed: July 15, 2003
    Publication date: April 22, 2004
    Inventors: Joseph S. Lombardo, Howard S. Burkom, Farzad Mostashari, Eugene Elbert
  • Publication number: 20030009239
    Abstract: Background noise from relevant data sets, including for example over-the-counter sales data, absenteeism data, etc., is subtracted using a background estimation algorithm that outputs residual data The effects of hypothetical anomalous events, such as a bio-terrorist attack, on the relevant data sets are modeled to create replica data. The replica data may be based on input from epidemiologists and various scenario templates including information on disease manifestation and other intelligence. The residual data and the replica data are then matched using a detector. Types of detectors include for example adaptive matched-filter detectors, change detectors and Bayesian Inference Networks. An alarm is triggered if a real anomalous event similar to a hypothetical anomalous event is detected. A Geographical Information System (GIS) may be used to display data from individual zip codes.
    Type: Application
    Filed: May 15, 2002
    Publication date: January 9, 2003
    Inventors: Joseph S Lombardo, Fernando J Pineda, Howard S Burkom, Bruce K Newhall, Rashid A Chotani, Richard A Wojcik, Wayne A Loschen