Modern robotic platforms need a reliable localization system to operate daily beside humans. Simple pose estimation algorithms based on filtered wheel and inertial odometry often fail in the presence of abrupt kinematic changes and wheel slips. Moreover, despite the recent success of visual odometry, service and assistive robotic tasks often present challenging environmental conditions where visual-based solutions fail due to poor lighting or repetitive feature patterns. In this work, we propose an innovative online learning approach for wheel odometry correction, paving the way for a robust multi-source localization system. An efficient attention-based neural network architecture has been studied to combine precise performances with real-time inference. The proposed solution shows remarkable results compared to a standard neural network and filter-based odometry correction algorithms. Nonetheless, the online learning paradigm avoids the time-consuming data collection procedure and can be adopted on a generic robotic platform on-the-fly.
翻译:现代机器人平台需要可靠的定位系统来与人类一起工作。基于滤波的轮式和惯性里程计的简单姿态估计算法在出现突发动力学变化和车轮滑动时通常会失败。此外,尽管视觉里程计最近取得了成功,但航空服务和辅助机器人任务经常面临具有挑战性的环境条件,其中基于视觉的解决方案由于光照不良或重复的特征模式而失败。在这项工作中,我们提出了一种创新的在线学习方法,用于纠正轮式里程计,为强大的多源定位系统铺平了道路。已经研究了一种高效的基于注意力机制的神经网络架构,将精密性能与实时推断相结合。与标准神经网络和基于滤波的里程计校正算法相比,所提出的解决方案显示出了显著的结果。尽管如此,在线学习范例避免了耗时的数据收集程序,可以在通用机器人平台上即时采用。