IEEE Access (Jan 2021)

Segmentation of Points in the Future: Joint Segmentation and Prediction of a Point Cloud

  • Cheng Wencan,
  • Jong Hwan Ko

DOI
https://doi.org/10.1109/ACCESS.2021.3069896
Journal volume & issue
Vol. 9
pp. 52977 – 52986

Abstract

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Recognizing and predicting future three-dimensional (3D) scenes are crucial steps for real-time vision-based control systems, as these steps enable them to react appropriately in advance. In this study, a method for predicting the position of a 3D point cloud in the future and simultaneously segmenting the predicted point cloud is proposed for the first time. The prediction and segmentation tasks are performed by a novel neural network architecture that extracts both local geometric features and flow features for joint segmentation and prediction. Furthermore, we propose a new evaluation metric for future point cloud segmentation to resolve the problem of inconsistency in the order of future point clouds. The results of experiments conducted using real-world large-scale benchmark datasets revealed that the proposed network achieves higher prediction and segmentation accuracy than other baseline methods.

Keywords