Exploiting Reusable Paths in Mobile Robotics: Benefits and Challenges for Long-term Autonomy

T. Barfoot, B. Stenning, P. Furgale, C. McManus
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引用次数: 14

Abstract

Visual-teach-and-repeat (VT&R) systems have proven extremely useful for practical robot autonomy where the global positioning system is either unavailable or unreliable, examples include tramming for underground mining using a planar laser scanner as well as a return-to-lander function for planetary exploration using a stereo-or laser-based camera. By embedding local appearance/metric information along an arbitrarily long path, it becomes possible to re-drive the path without the need for a single privileged coordinate frame and using only modest computational resources. For a certain class of long-term autonomy problems (e.g., repeatable long-range driving), VT&R appears to offer a simple yet scalable solution. Beyond single paths, we envision that networks of reusable paths could be established and shared from one robot to another to enable practical tasks such as surveillance, delivery (e.g., mail, hospitals, factories, warehouses), worksite operations (e.g., construction, mining), and autonomous roadways. However, for lifelong operations on reusable paths, robustness to a variety of environmental changes, both transient and permanent, is required. In this paper, we relate our experiences and lessons learned with the three above-mentioned implementations of VT&R systems. Based on this, we enumerate both the benefits and challenges of reusable paths that we see moving forwards. We discuss one such challenge, lighting-invariance, in detail and present our progess in overcoming it.
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在移动机器人中开发可重用路径:长期自治的好处和挑战
事实证明,在全球定位系统不可用或不可靠的情况下,视觉教学和重复(VT&R)系统对于实际的机器人自主性非常有用,例如使用平面激光扫描仪进行地下采矿的踩点,以及使用立体或激光相机进行行星探索的返回着陆器功能。通过沿着任意长的路径嵌入局部外观/度量信息,可以在不需要单个特权坐标帧和仅使用适度计算资源的情况下重新驱动路径。对于某些类型的长期自动驾驶问题(例如,可重复的远程驾驶),VT&R似乎提供了一种简单但可扩展的解决方案。除了单一路径,我们设想可以建立可重复使用的路径网络,并从一个机器人共享到另一个机器人,以实现实际任务,如监视,交付(例如,邮件,医院,工厂,仓库),工地操作(例如,建筑,采矿)和自主道路。然而,对于可重用路径上的终身操作,需要对各种环境变化(瞬时的和永久的)具有鲁棒性。在本文中,我们从上述三种VT&R系统的实现中总结了我们的经验和教训。在此基础上,我们列举了我们看到的可重用路径的好处和挑战。我们讨论了一个这样的挑战,光照不变性,详细介绍了我们在克服它的进展。
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