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Bayesian networks for obstacle classification in agricultural environments

机译:贝叶斯网络用于农业环境中的障碍分类

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Autonomous navigation in agricultural environments is a promising research topic for robotics, with several practical applications. This paper presents an obstacle detection system to operate in field scenarios that can accurately discern high and low vegetation from other types of obstacles. Our algorithm is composed by three steps: (i) obstacle detection based on geometric information; (ii) clustering of detected obstacles; and (iii) filtering false positive detections using Bayesian classifiers. Several experimental tests have been carried out in citrus plantations. The results showed that our approach is able to correctly identify obstacles, classifying them as people, bushes, animals, and grass of different heights. In addition, the proposed approach could also be employed as a general framework for stereo-based obstacle detection.
机译:农业环境中的自主导航是机器人的有希望的研究课题,具有几种实际应用。本文介绍了障碍物检测系统,可以在现场场景中操作,可以准确地辨别出来自其他类型的障碍物的高低植被。我们的算法由三个步骤组成:(i)基于几何信息的障碍物检测; (ii)检测到的障碍物的聚类; (iii)使用贝叶斯分类器过滤错误的阳性检测。在柑橘种植园进行了几种实验测试。结果表明,我们的方法能够正确地识别障碍,将它们分类为不同高度的人,灌木,动物和草。此外,所提出的方法也可以作为基于立体声的障碍物检测的一般框架。

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