Inference and Learning for Active Sensing‚ Experimental Design and Control
In this paper we argue that maximum expected utility is a suitable framework for modeling a broad range of decision problems arising in pattern recognition and related fields. Examples include, among others, gaze planning and other active vision problems, active learning, sensor and actuator placeme...
Main Authors: | Kueck, H, Hoffman, M, Doucet, A, Freitas, N |
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Other Authors: | Araujo, H |
Format: | Book |
Published: |
2009
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