Beiming Li

Affiliation: Unknown

Papers

  • SEER: Safe Efficient Exploration for Aerial Robots using Learning to Predict Information Gain

    We address the problem of efficient 3-D exploration in indoor environments for micro aerial vehicles with limited sensing capabilities and payload/power constraints. We develop an indoor exploration framework that uses learning to predict the occupancy of unseen areas, extracts semantic features, samples viewpoints to predict information gains for different exploration …

  • Learning to Explore Indoor Environments using Autonomous Micro Aerial Vehicles

    In this paper, we address the challenge of exploring unknown indoor aerial environments using autonomous aerial robots with Size Weight and Power (SWaP) constraints. The SWaP constraints induce limits on mission time requiring efficiency in exploration. We present a novel exploration framework that uses Deep Learning (DL) to predict the …