3 research outputs found

    Auto-supervised learning in the Bayesian Programming Framework

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    Domestic and real world robotics requires continuous learning of new skills and behaviors to interact with humans. Auto-supervised learning, a compromise between supervised and completely unsupervised learning, consist in relying on previous knowledge to acquire new skills. We propose here to realize auto-supervised learning by exploiting statistical regularities in the sensorimotor space of a robot. In our context, it corresponds to achieve feature selection in a Bayesian programming framework. We compare several feature selection algorithms and validate them on a real robotic experiment

    Perceptual navigation around a sensori-motor trajectory

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    voir basilic : http://emotion.inrialpes.fr/bibemotion/2004/PB04/ address: New Orleans, LA (US

    Perceptual navigation around a sensori-motor trajectory

    No full text
    voir basilic : http://emotion.inrialpes.fr/bibemotion/2004/PB04/ address: New Orleans, LA (US
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