Abstract / Description of output
Robots deployed in domains characterized by nondeterministic action outcomes and unforeseen changes frequently need considerable knowledge about the domain and tasks they have to perform. Humans, however, may not have the time and expertise to provide elaborate or accurate domain knowledge, and it may be difficult for robots to obtain many labeled training samples of domain objects and events. For widespread deployment, robots thus need the ability to incrementally and automatically extract relevant domain knowledge from multimodal sensor inputs, acquiring and using human feedback when such feedback is necessary and available. This paper describes a multiple-instance active learning algorithm for such incremental learning in the context of building models of relevant domain objects. We introduce the concept of bag uncertainty, enabling robots to identify the need for feedback, and to incrementally revise learned object models by associating visual cues extracted from images with verbal cues extracted from limited high-level human feedback. Images of indoor and outdoor scenes drawn from the IAPR TC-12 benchmark dataset are used to show that our algorithm provides better object recognition accuracy than a state of the art multiple-instance active learning algorithm.
Original language | English |
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Title of host publication | Proceedings of the Twenty-Seventh International Florida Artificial Intelligence Research Society Conference (FLAIRS 2014) |
Publication status | Published - 1 Aug 2014 |