论文标题
协作多机器人感知的同时视图和功能选择
Simultaneous View and Feature Selection for Collaborative Multi-Robot Perception
论文作者
论文摘要
协作多机器人感知提供了环境的多种视图,即使单个机器人的观点差或障碍引起遮挡,也提供了不同的观点,以协作了解环境。这些多个观察结果必须智能融合以进行准确的识别,并且需要选择相关的观察结果,以便允许不必要的机器人继续观察其他目标。在文献中,该研究问题尚未得到很好的研究。在本文中,我们提出了一种新颖的方法来进行协作多机器人感知,该方法同时将视图选择,特征选择和对象识别整合到统一的正则化优化公式中,该公式使用稀疏性诱导规范,以最具代表性的视图和最具歧视性的方式识别机器人。由于我们的优化公式由于引入了非平滑规范而难以解决,因此我们实现了一种新的迭代优化算法,该算法可以保证将其收敛到最佳解决方案。我们通过模拟和物理多机器人系统的案例研究来评估我们的方法。实验结果表明,我们的方法可以通过准确的对象识别以及有效的视图和特征选择来实现有效的协作感知。
Collaborative multi-robot perception provides multiple views of an environment, offering varying perspectives to collaboratively understand the environment even when individual robots have poor points of view or when occlusions are caused by obstacles. These multiple observations must be intelligently fused for accurate recognition, and relevant observations need to be selected in order to allow unnecessary robots to continue on to observe other targets. This research problem has not been well studied in the literature yet. In this paper, we propose a novel approach to collaborative multi-robot perception that simultaneously integrates view selection, feature selection, and object recognition into a unified regularized optimization formulation, which uses sparsity-inducing norms to identify the robots with the most representative views and the modalities with the most discriminative features. As our optimization formulation is hard to solve due to the introduced non-smooth norms, we implement a new iterative optimization algorithm, which is guaranteed to converge to the optimal solution. We evaluate our approach through a case-study in simulation and on a physical multi-robot system. Experimental results demonstrate that our approach enables effective collaborative perception through accurate object recognition and effective view and feature selection.