Long-Term Visual SLAM with Bayesian Persistence Filter Based Global Map Prediction
Tianchen Deng, Hongle Xie, Jingchuan Wang, Weidong Chen
Abstract
With the rapidly growing demand for accurate localization in real-world environments, visual SLAM has received significant attention in recent years. However, those existing methods still suffer from the degradation of localization accuracy in long-term changing environments. To address these problems, we propose a novel long-term SLAM system with map prediction and dynamics removal. First, a visual point cloud matching algorithm is designed to efficiently fuse 2D pixel information and 3D voxel information. Second, each map point is classified into three types: static, semi-static, and dynamic, based on the Bayesian persistence filter. Then we remove the dynamic map points to eliminate the influence of those map points. We can obtain a global predicted map by modeling the time series of semi-static map points. Finally, we incorporate the predicted global map into a state-of-art SLAM method, achieving an efficient visual SLAM system for long- term dynamic environments. Extensive experiments are carried out on a wheelchair robot in an indoor environment over several months. The results demonstrate that our method has better map prediction accuracy and achieves more robust localization performance.