面向露天农业机器人应用的安全:一种基于分类器的人类风险评估方法

José C. Mayoral, Lars Grimstad, P. From, Grzegorz Cielniak
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引用次数: 2

摘要

几十年来,拖拉机和重型机械一直被用于提高质量和整体农业生产。此外,农业正在成为机器人技术的一个趋势领域,因此,对农业任务自动化的努力逐年增加。然而,对于自动驾驶应用来说,事故预防对于在任何情况下保证人类安全都是至关重要的。本文将人类安全重新表述为一个使用自定义距离标准的分类问题,其中每个被检测到的人得到一个风险级别分类。我们建议使用经过训练的神经网络来根据这些标准检测和分类场景中的人。该方法从与开放场景相对应的真实世界数据中学习,并使用自定义风险评估方法进行评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Safety in Open-field Agricultural Robotic Applications: A Method for Human Risk Assessment using Classifiers
Tractors and heavy machinery have been used for decades to improve the quality and overall agriculture production. Moreover, agriculture is becoming a trend domain for robotics, and as a consequence, the efforts towards automatizing agricultural task increases year by year. However, for autonomous applications, accident prevention is of prior importance for warrantying human safety during operation in any scenario. This paper rephrases human safety as a classification problem using a custom distance criterion where each detected human gets a risk level classification. We propose the use of a neural network trained to detect and classify humans in the scene according to these criteria. The proposed approach learns from real-world data corresponding to an open-field scenario and is assessed with a custom risk assessment method.
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