Gaussian Process Based Bayesian Inference System for Intelligent Surface Measurement

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2018
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Abstract
This paper presents a Gaussian process based Bayesian inference system for the realization of intelligent surface measurement on multi-sensor instruments. The system considers the surface measurement as a time series data collection process, and the Gaussian process is used as mathematical foundation to establish an inferring plausible model to aid the measurement process via multi-feature classification and multi-dataset regression. Multi-feature classification extracts and classifies the geometric features of the measured surfaces at different scales to design an appropriate composite covariance kernel and corresponding initial sampling strategy. Multi-dataset regression takes the designed covariance kernel as input to fuse the multi-sensor measured datasets with Gaussian process model, which is further used to adaptively refine the initial sampling strategy by taking the credibility of the fused model as the critical sampling criteria. Hence, intelligent sampling can be realized with consecutive learning process with full Bayesian treatment. The statistical nature of the Gaussian process model combined with various powerful covariance kernel functions offer the system great flexibility for different kinds of complex surfaces.
Reference Key
ren2018sensorsgaussian Use this key to autocite in the manuscript while using SciMatic Manuscript Manager or Thesis Manager
Authors Ming Jun Ren;Chi Fai Cheung;Gao Bo Xiao;Ren, Ming Jun;Cheung, Chi Fai;Xiao, Gao Bo;
Journal sensors
Year 2018
DOI
10.3390/s18114069
URL
Keywords

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