Invention Grant
- Patent Title: Method and system for multiple dataset gaussian process modeling
- Patent Title (中): 多元数据集高斯过程建模的方法与系统
-
Application No.: US13496480Application Date: 2010-09-15
-
Publication No.: US08825456B2Publication Date: 2014-09-02
- Inventor: Shrihari Vasudevan , Fabio Tozeto Ramos , Eric Nettleton , Hugh Durrant-Whyte
- Applicant: Shrihari Vasudevan , Fabio Tozeto Ramos , Eric Nettleton , Hugh Durrant-Whyte
- Applicant Address: AU Sydney
- Assignee: The University of Sydney
- Current Assignee: The University of Sydney
- Current Assignee Address: AU Sydney
- Agency: Blakely, Sokoloff, Taylor & Zafman LLP
- Priority: AU2009904466 20090915; AU2010900196 20100119
- International Application: PCT/AU2010/001196 WO 20100915
- International Announcement: WO2011/032207 WO 20110324
- Main IPC: G06F7/60
- IPC: G06F7/60

Abstract:
A method of computerized data analysis and synthesis is described. First and second datasets of a quantity of interest are stored. A Gaussian process model is generated using the first and second datasets to compute optimized kernel and noise hyperparameters. The Gaussian process model is applied using the stored first and second datasets and hyperparameters to perform Gaussian process regression to compute estimates of unknown values of the quantity of interest. The resulting computed estimates of the quantity of interest result from a non-parametric Gaussian process fusion of the first and second measurement datasets. The first and second datasets may be derived from the same or different measurement sensors. Different sensors may have different noise and/or other characteristics.
Public/Granted literature
- US20120179635A1 METHOD AND SYSTEM FOR MULTIPLE DATASET GAUSSIAN PROCESS MODELING Public/Granted day:2012-07-12
Information query