Saeedi Sajad, Paull Liam, Trentini Michael, Li Howard
Department of Electrical and Computer Engineering, University of New Brunswick, Fredericton, NB E3B 9P8, Canada.
IEEE Trans Neural Netw. 2011 Dec;22(12):2376-87. doi: 10.1109/TNN.2011.2176541. Epub 2011 Dec 5.
In this paper, a decentralized platform for simultaneous localization and mapping (SLAM) with multiple robots is developed. Each robot performs single robot view-based SLAM using an extended Kalman filter to fuse data from two encoders and a laser ranger. To extend this approach to multiple robot SLAM, a novel occupancy grid map fusion algorithm is proposed. Map fusion is achieved through a multistep process that includes image preprocessing, map learning (clustering) using neural networks, relative orientation extraction using norm histogram cross correlation and a Radon transform, relative translation extraction using matching norm vectors, and then verification of the results. The proposed map learning method is a process based on the self-organizing map. In the learning phase, the obstacles of the map are learned by clustering the occupied cells of the map into clusters. The learning is an unsupervised process which can be done on the fly without any need to have output training patterns. The clusters represent the spatial form of the map and make further analyses of the map easier and faster. Also, clusters can be interpreted as features extracted from the occupancy grid map so the map fusion problem becomes a task of matching features. Results of the experiments from tests performed on a real environment with multiple robots prove the effectiveness of the proposed solution.
本文开发了一种用于多机器人同时定位与地图构建(SLAM)的分布式平台。每个机器人使用扩展卡尔曼滤波器执行基于单机器人视图的SLAM,以融合来自两个编码器和一个激光测距仪的数据。为了将这种方法扩展到多机器人SLAM,提出了一种新颖的占用网格地图融合算法。地图融合通过一个多步骤过程实现,该过程包括图像预处理、使用神经网络的地图学习(聚类)、使用范数直方图互相关和拉东变换的相对方向提取、使用匹配范数向量的相对平移提取,然后对结果进行验证。所提出的地图学习方法是一个基于自组织映射的过程。在学习阶段,通过将地图的占用单元格聚类成簇来学习地图的障碍物。该学习是一个无监督过程,可以即时完成,无需任何输出训练模式。这些簇代表了地图的空间形式,使对地图的进一步分析更容易、更快。此外,簇可以被解释为从占用网格地图中提取的特征,因此地图融合问题就变成了一个特征匹配任务。在真实环境中对多个机器人进行测试的实验结果证明了所提出解决方案的有效性。