论文标题

一个新颖的占用映射框架,用于在非结构化环境中的风险感知路径计划

A Novel Occupancy Mapping Framework for Risk-Aware Path Planning in Unstructured Environments

论文作者

Laconte, Johann, Kasmi, Abderrahim, Pomerleau, François, Chapuis, Roland, Malaterre, Laurent, Debain, Christophe, Aufrère, Romuald

论文摘要

在自主机器人的背景下,最重要的任务之一是防止导航期间对机器人的潜在损害。为此,通常假定必须处理已知的概率障碍,然后计算与每个障碍物碰撞的可能性。但是,在复杂的场景或非结构化环境中,可能很难发现此类障碍。在这些情况下,使用度量图,每个位置都存储占用信息。最常见的公制图是贝叶斯占用图。但是,由于其离散的性质,这种类型的地图不适合计算连续路径的风险评估。因此,我们介绍了一种名为Lambda Field的新型地图,该地图是专门为风险评估而设计的。我们首先提出了一种计算此类地图的方法,并在路径上对通用风险的期望。然后,我们通过用例证明了通用表述的好处,将风险定义为路径上的预期碰撞力。使用此风险定义和Lambda字段,我们表明我们的框架能够在具有物理基于物理的指标的同时进行经典的路径计划。此外,Lambda领域提供了一种自然的方式来应对非结构化的环境,例如高草。在标准的环境表示始终会产生围绕这样的障碍的轨迹的地方,我们的框架使机器人可以穿过草,同时意识到所带来的风险。

In the context of autonomous robots, one of the most important tasks is to prevent potential damage to the robot during navigation. For this purpose, it is often assumed that one must deal with known probabilistic obstacles, then compute the probability of collision with each obstacle. However, in complex scenarios or unstructured environments, it might be difficult to detect such obstacles. In these cases, a metric map is used, where each position stores the information of occupancy. The most common type of metric map is the Bayesian occupancy map. However, this type of map is not well suited for computing risk assessments for continuous paths due to its discrete nature. Hence, we introduce a novel type of map called the Lambda Field, which is specially designed for risk assessment. We first propose a way to compute such a map and the expectation of a generic risk over a path. Then, we demonstrate the benefits of our generic formulation with a use case defining the risk as the expected collision force over a path. Using this risk definition and the Lambda Field, we show that our framework is capable of doing classical path planning while having a physical-based metric. Furthermore, the Lambda Field gives a natural way to deal with unstructured environments, such as tall grass. Where standard environment representations would always generate trajectories going around such obstacles, our framework allows the robot to go through the grass while being aware of the risk taken.

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