Data Fusion Mapping Estimation
- Technology Benefits
- Compared to current methods, it can give more geographically accurate probability density estimates.
- Technology Application
- This method can be used for such applications as:Mapping threat level probabilities for crimeSolving geographic profiling problemsAscertaining geographic location using wireless technology
- Detailed Technology Description
- UCLA researchers have developed a method that gives more geographically accurate probability density estimates. It uses a novel set of models that restrict the support of the density estimate to the valid region and ensure realistic behavior. This approach embodies new fast computational methods for density estimation using maximum penalized likelihood estimations.
- Supplementary Information
- Patent Number: US20120257818A1
Application Number: US13306919A
Inventor: Bertozzi, Andrea L. | Smith, Laura M. | Keegan, Matthew S. | Wittman, Todd | Mohler, George O.
Priority Date: 29 Nov 2010
Priority Number: US20120257818A1
Application Date: 29 Nov 2011
Publication Date: 11 Oct 2012
IPC Current: G06K000962
US Class: 382155
Assignee Applicant: The Regents of the University of California
Title: SYSTEMS AND METHODS FOR DATA FUSION MAPPING ESTIMATION
Usefulness: SYSTEMS AND METHODS FOR DATA FUSION MAPPING ESTIMATION
Novelty: System for generating probability density to estimate probability that an event will occur in a region of interest, includes programming for inputting spatial event data comprising events occurring in region of interest
- Industry
- ICT/Telecom
- Sub Category
- Software/Application
- Application No.
- 8938115
- Others
-
State Of Development
Researchers have finished and published the computer model simulation results on a residential burglary dataset. Background
High resolution and hyperspectral satellite images, city and county boundary maps, census data, and other types of geographical data provide much information about a given region. It is desirable to integrate this knowledge into models defining geographically dependent data. However, common methods of density estimation, such as Kernel Density Estimation, do not incorporate geographical information. Using such methods could result in predicting events in unrealistic or unreasonable geographic locations, such as residential burglary in the ocean. Related Materials
Additional Technologies by these Inventors
- Rapid Computational Technique for Inpainting of High Contrast Images
- Automated Activity Classification Of Video From Body Worn Cameras
Tech ID/UC Case
22308/2011-324-0
Related Cases
2011-324-0
- *Abstract
-
UCLA researchers in the Department of Mathematics have developed a novel probability density estimation method that incorporates geographical information.
- *Applications
-
This method can be used for such applications as:
- *IP Issue Date
- Jan 20, 2015
- *Principal Investigator
-
Name: Andrea Bertozzi
Department:
Name: Matthew Keegan
Department:
Name: George Mohler
Department:
Name: Laura Michelle Smith
Department:
Name: Todd Wittman
Department:
- Country/Region
- USA

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