发明名称 Online Sparse Matrix Gaussian Process Regression And Visual Applications
摘要 An online sparse matrix Gaussian process (OSMGP) uses online updates to provide an accurate and efficient regression for applications such as pose estimation and object tracking. A regression calculation module calculates a regression on a sequence of input images to generate output predictions based on a learned regression model. The regression model is efficiently updated by representing a covariance matrix of the regression model using a sparse matrix factor (e.g., a Cholesky factor). The sparse matrix factor is maintained and updated in real-time based on the output predictions. Hyperparameter optimization, variable reordering, and matrix downdating techniques can also be applied to further improve the accuracy and/or efficiency of the regression process.
申请公布号 US2009164405(A1) 申请公布日期 2009.06.25
申请号 US20080276128 申请日期 2008.11.21
申请人 HONDA MOTOR CO., LTD. 发明人 YANG MING-HSUAN;RANGANATHAN ANANTH
分类号 G06N5/02 主分类号 G06N5/02
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