For safe operation, a robot must be able to avoid collisions in uncertain
environments. Existing approaches for motion planning under uncertainties often
assume parametric obstacle representations and Gaussian uncertainty, which can
be inaccurate. While visual perception can deliver a more accurate
representation of the environment, its use for safe motion planning is limited
by the inherent miscalibration of neural networks and the challenge of
obtaining adequate datasets. To address these limitations, we propose to employ
ensembles of deep semantic segmentation networks trained with massively
augmented datasets to ensure reliable probabilistic occupancy information. To
avoid conservatism during motion planning, we directly employ the probabilistic
perception in a scenario-based path planning approach. A velocity scheduling
scheme is applied to the path to ensure a safe motion despite tracking
inaccuracies. We demonstrate the effectiveness of the massive data augmentation
in combination with deep ensembles and the proposed scenario-based planning
approach in comparisons to state-of-the-art methods and validate our framework
in an experiment with a human hand as an obstacle