Joint Inference of States, Robot Knowledge, and Human (False-)Beliefs
Aiming to understand how human (false-)belief--a core socio-cognitive ability--would affect human interactions with robots, this paper proposes to adopt a graphical model to unify the representation of object states, robot knowledge, and human (false-)beliefs. Specifically, a parse graph (pg) is lea...
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Zusammenfassung: | Aiming to understand how human (false-)belief--a core socio-cognitive
ability--would affect human interactions with robots, this paper proposes to
adopt a graphical model to unify the representation of object states, robot
knowledge, and human (false-)beliefs. Specifically, a parse graph (pg) is
learned from a single-view spatiotemporal parsing by aggregating various object
states along the time; such a learned representation is accumulated as the
robot's knowledge. An inference algorithm is derived to fuse individual pg from
all robots across multi-views into a joint pg, which affords more effective
reasoning and inference capability to overcome the errors originated from a
single view. In the experiments, through the joint inference over pg-s, the
system correctly recognizes human (false-)belief in various settings and
achieves better cross-view accuracy on a challenging small object tracking
dataset. |
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DOI: | 10.48550/arxiv.2004.12248 |