AutoMerge: A Framework for Map Assembling and Smoothing in City-scale Environments
Yin, Peng, Lai, Haowen, Zhao, Shiqi, Ge, Ruohai, Zhang, Ji, Choset, Howie, Scherer, Sebastian
–arXiv.org Artificial Intelligence
Adaptive Loop Closure Detection: Spurious loop closures are frequent in environments with repetitive appearances, such as long streets. On the one hand, false positive place I. SYSTEM OVERVIEW retrievals may easily break the global optimization system, As shown in Figure 1, AutoMerge provides an automatic and ideally 100% accuracy can avoid these optimization map merging system for the large-scale single-/multi-agent failures for large-scale mapping. On the other hand, low recalls mapping tasks. Each agent is equipped with a LiDAR mapping can provide partial data association, which will affect global module to enable the self-maintained sub-map generation and optimization performance. Hybrid loop closure detection takes odometry estimation. The AutoMerge system consists of three advantage of sequence matching to provide continuous true modules: 1) fusion-enhanced place descriptor extraction, 2) an positive retrievals over long overlaps, and RANSAC-based adaptive data-association mechanism to provide high accuracy single frame detection for local overlaps. By analyzing the and recall for segment-wise place retrievals, and 3) a partially feature correlation between segments, we can balance the place decentralized system to provide centralized map merging and retrievals from sequence-/single-frame matching to provide single agent self-localization in the world frame.
arXiv.org Artificial Intelligence
Jun-26-2023
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