We propose MAP-NBV, a prediction-guided active algorithm for 3D
reconstruction with multi-agent systems. Prediction-based approaches have shown
great improvement in active perception tasks by learning the cues about
structures in the environment from data. But these methods primarily focus on
single-agent systems. We design a next-best-view approach that utilizes
geometric measures over the predictions and jointly optimizes the information
gain and control effort for efficient collaborative 3D reconstruction of the
object. Our method achieves 22.75% improvement over the prediction-based
single-agent approach and 15.63% improvement over the non-predictive
multi-agent approach. We make our code publicly available through our project
website: http://raaslab.org/projects/MAPNBV/Comment: 7 pages, 7 figures, 2 tables. Submitted to MRS 202