基于概率配准模型的鲁棒语义映射匹配算法

Qingxiang Zhang, Meiling Wang, Yufeng Yue
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引用次数: 3

摘要

对多机器人生成的局部地图进行匹配和融合,可以大大提高相对定位和协同测绘的性能。目前,现有的语义匹配方法部分基于经典的迭代封闭点(ICP),在初始误差较大的情况下往往会失败。此外,目前的语义匹配算法在优化变换矩阵时计算量较大。针对地图匹配初始误差大的问题,提出了一种具有大收敛区域的语义地图匹配算法。本文的新颖之处在于设计了初始变换优化算法和概率配准模型,增加了收敛区域。为了减少迭代过程前的初始误差,通过估计数据关联的可信度来优化初始变换矩阵。同时,计算一个反映初始误差不确定性的因子,并将其引入到概率配准模型的公式中,从而加快了收敛过程。在公共数据集上进行了实验,并与现有方法进行了比较,结果表明该算法在匹配精度和鲁棒性方面都有显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Semantic Map Matching Algorithm Based on Probabilistic Registration Model
The matching and fusing of local maps generated by multiple robots can greatly enhance the performance of relative localization and collaborative mapping. Currently, existing semantic matching methods are partly based on classical iterative closet point (ICP), which typically fail in cases with large initial error. What’s more, current semantic matching algorithms have high computation complexity in optimizing the transformation matrix. To address the challenge of map matching with large initial error, this paper proposes a novel semantic map matching algorithm with large convergence region. The key novelty of this work is the designing of the initial transformation optimization algorithm and the probabilistic registration model to increase the convergence region. To reduce the initial error before the iteration process, the initial transformation matrix is optimized by estimating the credibility of the data association. At the same time, a factor reflecting the uncertainty of the initial error is calculated and introduced to the formulation of the probabilistic registration model, thereby accelerating the convergence process. The proposed algorithm is performed on public datasets and compared with existing methods, demonstrating the significant improvement in terms of matching accuracy and robustness.
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