Policy Learning with Hypothesis based Local Action Selection
Bharath Sankaran, Jeannette Bohg, Nathan Ratliff, Stefan Schaal

TL;DR
This paper introduces a hypothesis-based action selection method for robots to manipulate objects in cluttered, partially observable environments by managing uncertainty about object poses through a hypothesis set.
Contribution
It proposes a novel hypothesis set approach for action selection that efficiently handles partial observability and complex interactions without explicit modeling of all object interactions.
Findings
Effective in cluttered environments with partial observability
Reduces complexity by avoiding explicit modeling of all interactions
Converges when object pose uncertainty is fully resolved
Abstract
For robots to be able to manipulate in unknown and unstructured environments the robot should be capable of operating under partial observability of the environment. Object occlusions and unmodeled environments are some of the factors that result in partial observability. A common scenario where this is encountered is manipulation in clutter. In the case that the robot needs to locate an object of interest and manipulate it, it needs to perform a series of decluttering actions to accurately detect the object of interest. To perform such a series of actions, the robot also needs to account for the dynamics of objects in the environment and how they react to contact. This is a non trivial problem since one needs to reason not only about robot-object interactions but also object-object interactions in the presence of contact. In the example scenario of manipulation in clutter, the state…
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Taxonomy
TopicsReinforcement Learning in Robotics · Machine Learning and Algorithms · Auction Theory and Applications
