农业机器人中基于结构化导航的异常检测方法

H. Nehme, Clément Aubry, R. Rossi, R. Boutteau
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引用次数: 3

摘要

局部感知导航方法允许农业机器人在执行自动化耕作任务时准确跟踪作物行结构。将这些方法整合为完全自主导航解决方案的一部分,需要对其可靠性进行持续评估,因为它们在不断变化和不可预测的环境中仅依赖传感器数据。针对农业结构导航任务,提出了一种数据驱动的监测方法。该方法采用半监督异常检测,旨在学习正常场景几何模型,该模型表征了所考虑任务的可靠执行域。为此,在激光雷达点云的霍夫表示上以一类分类方式训练卷积神经网络。在实验中,使用学习到的正常模型推导出基于激光雷达的跟踪算法的置信度度量,使其能够作为商业机器人平台葡萄园混合导航解决方案的一部分集成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Anomaly Detection Approach to Monitor the Structured-Based Navigation in Agricultural Robotics
Local perception navigation methods allow agricultural robots to accurately track crop row structures while performing automated farming tasks. The integration of these methods as a part of a fully autonomous navigation solution requires continuous assessment of their reliability since they rely solely on sensor data in a changing and unpredictable environment. This paper presents a data-driven monitoring approach for the task of structure-based navigation in agriculture. The proposed method applies semi-supervised anomaly detection, aiming to learn a model of normal scene geometry that characterizes a domain of reliable execution of the considered task. To this end, a convolutional neural network was trained in one-class classification fashion on Hough representations of LiDAR point clouds. In experimentation, the learned normal model was used to derive a confidence measure for a LiDAR-based tracking algorithm allowing its integration as a part of a hybrid navigation solution in vineyards for a commercial robotic platform.
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