IEEE Trans Vis Comput Graph. 2019 Nov;25(11):3052-3062. doi: 10.1109/TVCG.2019.2932216. Epub 2019 Aug 12.
Object-based simultaneous localization and mapping (SLAM) is a more natural and robust way for agents to interact with their surrounding environment. However, it introduces a problem of semantic objects association. Correct object association is the key factor to achieve a successful object SLAM system because object association and SLAM are inherently coupled and have not been well tackled yet. A novel formulation of the object association problem based on a hierarchical Dirichlet process (HDP) is proposed. Through the HDP, we can hierarchically associate the grouped object measurements. This can improve the object association accuracy and computation efficiency. Thanks to the novel formulation, the proposed method is also able to correct failure object associations according to its sampling inference algorithm. Furthermore, we introduce object poses to the processing of pose optimization. The object association and pose optimization are then solved in a tightly coupled way, by which both aspects can promote each other. The proposed method is evaluated on indoor and outdoor datasets and the experimental results show a very impressive improvement with respect to the traditional SLAM.
基于对象的同步定位与地图构建(SLAM)是智能体与周围环境交互的一种更自然、更稳健的方式。然而,它引入了语义对象关联的问题。正确的对象关联是实现成功的对象SLAM系统的关键因素,因为对象关联和SLAM本质上是相互耦合的,且尚未得到很好的解决。提出了一种基于分层狄利克雷过程(HDP)的对象关联问题的新公式。通过HDP,我们可以对分组的对象测量进行分层关联。这可以提高对象关联的准确性和计算效率。得益于这个新公式,所提出的方法还能够根据其采样推理算法纠正失败的对象关联。此外,我们将对象姿态引入到姿态优化的处理中。然后以紧密耦合的方式解决对象关联和姿态优化问题,通过这种方式两者可以相互促进。所提出的方法在室内和室外数据集上进行了评估,实验结果表明相对于传统SLAM有非常显著的改进。