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Predicting respiratory motion for active canceling during percutaneous needle insertion

Cameron N. Riviere, Anshul Thakral, Iulian Iordachita, G. Mitroi, Dan Stoianovici

Year
2005
Citations
40

Abstract

Prediction of bodily motion due to respiration was investigated preparatory to implementation of active compensation for respiration in a robot-assisted system for percutaneous kidney surgery. Data for preliminary testing were recorded from the chest wall of a subject using an optical displacement sensor. The weighted-frequency Fourier linear combiner algorithms an adaptive modeling: algorithm, was used to model and predict respiratory movement. Preliminary results are presented, in which the algorithm is shown to track a 0.86 mm rms respiration signal with 0.11 mm rms error. The general robotic system and compensation scheme are also described.

Keywords

Compensation (psychology)Displacement (psychology)Computer scienceMotion compensationSIGNAL (programming language)Computer visionArtificial intelligenceRespirationControl theory (sociology)Percutaneous

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