SOTAVerified

A metric for evaluating 3D reconstruction and mapping performance with no ground truthing

2021-01-25Code Available0· sign in to hype

Guoxiang Zhang, YangQuan Chen

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

It is not easy when evaluating 3D mapping performance because existing metrics require ground truth data that can only be collected with special instruments. In this paper, we propose a metric, dense map posterior (DMP), for this evaluation. It can work without any ground truth data. Instead, it calculates a comparable value, reflecting a map posterior probability, from dense point cloud observations. In our experiments, the proposed DMP is benchmarked against ground truth-based metrics. Results show that DMP can provide a similar evaluation capability. The proposed metric makes evaluating different methods more flexible and opens many new possibilities, such as self-supervised methods and more available datasets.

Tasks

Reproductions