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Viewpoint Evaluation for Online 3-D Active Object Classification

Timothy Patten, Michael Zillich, Robert Fitch, Markus Vincze, Salah Sukkarieh

Year
2015
Citations
40

Abstract

We present an end-to-end method for active object classification in cluttered scenes from RGB-D data. Our algorithms predict the quality of future viewpoints in the form of entropy using both class and pose. Occlusions are explicitly modeled in predicting the visible regions of objects, which modulates the corresponding discriminatory value of a given view. We implement a one-step greedy planner and demonstrate our method online using a mobile robot. We also analyze the performance of our method compared to similar strategies in simulated execution using the Willow Garage dataset. Results show that our active method usefully reduces the number of views required to accurately classify objects in clutter as compared to traditional passive perception.

Keywords

Artificial intelligenceComputer scienceClutterComputer visionEntropy (arrow of time)Object (grammar)ViewpointsPattern recognition (psychology)Machine learningRadar

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