June 15, 2022, 1:10 a.m. | Glen Chou, Necmiye Ozay, Dmitry Berenson

cs.LG updates on arXiv.org arxiv.org

We present a motion planning algorithm for a class of uncertain
control-affine nonlinear systems which guarantees runtime safety and goal
reachability when using high-dimensional sensor measurements (e.g., RGB-D
images) and a learned perception module in the feedback control loop. First,
given a dataset of states and observations, we train a perception system that
seeks to invert a subset of the state from an observation, and estimate an
upper bound on the perception error which is valid with high probability in …

arxiv feedback images motion planning perception planning theory

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