Selection of Image Features for Robot Positioning using Mutual Information

نویسندگان

  • Gordon Wells
  • Carme Torras
چکیده

The authors previously developed a prototype f o r visual robot positioning, based o n global image descriptors and neural networks [15]. Now, a procedure to automatically select subsets of image features most relevant to determine pose variations along each of the six degrees of freedom (dof’s) has been incorporated into the prototype. This procedure is based o n a statistical measure of variable interdependence, called Mutual Information. Three families of features are considered in this paper: geometric moments, eigenfeatures and pose-image covariance vectors. T h e experimental results described show the quantitative and qualitative benefits of carrying out this feature selection prior to training the neural network: Less network inputs need to be considered, thus considerably shortening training times; the dof’s that would yield larger errors can be determined beforehand, so that more informative features can be looked for; the ordering of the features selected f o r each dof often admits a very natural interpretation, which in turn helps to provide insights for devising features tailored to each dof.

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تاریخ انتشار 1998