Cossette Charles Champagne, Shalaby Mohammed Ayman, Saussié David, Forbes James Richard
Department of Mechanical Engineering, McGill University, Montreal, QC, Canada.
Department of Electrical Engineering, Polytechnique Montréal, Montreal, QC, Canada.
Int J Rob Res. 2024 Sep;43(10):1573-1593. doi: 10.1177/02783649241230993. Epub 2024 Apr 3.
This paper addresses the problem of decentralized, collaborative state estimation in robotic teams. In particular, this paper considers problems where individual robots estimate similar physical quantities, such as each other's position relative to themselves. The use of is introduced as a means of modeling such relationships between robots' state estimates and is shown to be a tractable way to approach the decentralized state estimation problem. Moreover, this formulation easily leads to a general-purpose observability test that simultaneously accounts for measurements that robots collect from their own sensors, as well as the communication structure within the team. Finally, input preintegration is proposed as a communication-efficient way of sharing odometry information between robots, and the entire theory is appropriate for both vector-space and Lie-group state definitions. To overcome the need for communicating preintegrated covariance information, a deep autoencoder is proposed that reconstructs the covariance information from the inputs, hence further reducing the communication requirements. The proposed framework is evaluated on three different simulated problems, and one experiment involving three quadcopters.
本文探讨了机器人团队中的分散式协作状态估计问题。具体而言,本文考虑了个体机器人估计相似物理量的问题,例如彼此相对于自身的位置。引入了[具体内容缺失]作为对机器人状态估计之间此类关系进行建模的一种手段,并表明这是解决分散式状态估计问题的一种易于处理的方法。此外,这种公式很容易导致一种通用的可观测性测试,该测试同时考虑了机器人从自身传感器收集的测量值以及团队内部的通信结构。最后,提出了输入预积分作为机器人之间共享里程计信息的一种通信高效方式,并且整个理论适用于向量空间和李群状态定义。为了克服通信预积分协方差信息的需求,提出了一种深度自动编码器,它从输入中重建协方差信息,从而进一步降低通信需求。所提出的框架在三个不同的模拟问题以及一个涉及三个四旋翼飞行器的实验上进行了评估。