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Active Bayesian perception for angle and position discrimination with a biomimetic fingertip

Uriel Martínez-Hernández, Tony J. Dodd, Tony J. Prescott, Nathan F. Lepora

发表年份
2013
引用次数
64

摘要

In this work, we apply active Bayesian perception to angle and position discrimination and extend the method to perform actions in a sensorimotor task using a biomimetic fingertip. The first part of this study tests active perception off-line with a large dataset of edge orientations and positions, using a Monte Carlo validation to ascertain the classification accuracy. We observe a significant improvement over passive methods that lack a sensorimotor loop for actively repositioning the sensor. The second part of this study then applies these findings about active perception to an example sensorimotor task in real-time. Using an appropriate online sensorimotor control architecture, the robot made decisions about what to do next and where to move next, which was applied to a contour-following task around several objects. The successful outcome of this simple but illustrative task demonstrates that active perception can be of practical benefit for tactile robotics.

关键词

Task (project management)Artificial intelligencePerceptionActive perceptionComputer scienceRoboticsBayesian probabilityComputer visionPosition (finance)Robot

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