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Embodied Active Learning of Generative Sensor-Object Models

14 October 2024
Allison Pinosky
Todd D. Murphey
    LM&Ro
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Abstract

When a robot encounters a novel object, how should it respond\unicodex2014\unicode{x2014}\unicodex2014what data should it collect\unicodex2014\unicode{x2014}\unicodex2014so that it can find the object in the future? In this work, we present a method for learning image features of an unknown number of novel objects. To do this, we use active coverage with respect to latent uncertainties of the novel descriptions. We apply ergodic stability and PAC-Bayes theory to extend statistical guarantees for VAEs to embodied agents. We demonstrate the method in hardware with a robotic arm; the pipeline is also implemented in a simulated environment. Algorithms and simulation are available open source, see http://sites.google.com/u.northwestern.edu/embodied-learning-hardware .

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