Research of Small Parts Gesture Estimation Based on Multilevel RVM Regression
As to the real-time positioning demands for micro assembly process, this paper proposes a way which is based on Relevance Vector Machine Regression (RVMR).It solves the low efficiency problem which usually accompanies other common regression algorithms because the regression pattern is not sparse enough.This paper brings out grading RVMR, adopting the thought what is called From coarse to fine .In this way, the number of training samples is greatly reduced while guaranteeing precision.So the off-line training efficiency is improved, meeting various parts in micro assembly process.In this algorithm, the algebra feature of the part image is extracted as the RVMs input, using Principal Component Analysis (PCA).Experiments on many regression algorithms and grading R VMR are both carried on.The results show that R VMR gets the shortest measuring time and the highest accuracy.The single axis estimation precision of part attitude is better than 0.5°.
Micro assembly Attitude estimation Relevance vector machine Regression
Chen Xiaojun Hu Tao Wang Dandan Wu Huilan
Beijing Institute of Astronautical Systems Engineering,Beijing,100076,China Harbin Institute of Technology,Department of Automatic Measurement and Control,Harbin,150001,china
国际会议
哈尔滨
英文
895-899
2013-08-16(万方平台首次上网日期,不代表论文的发表时间)