Plant Species Classification Using a 3D LIDAR Sensor and Machine Learning

Ulrich Weiss, P. Biber, Stefan Laible, K. Bohlmann, A. Zell
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引用次数: 51

Abstract

In the domain of agricultural robotics, one major application is crop scouting, e.g., for the task of weed control. For this task a key enabler is a robust detection and classification of the plant and species. Automatically distinguishing between plant species is a challenging task, because some species look very similar. It is also difficult to translate the symbolic high level description of the appearances and the differences between the plants used by humans, into a formal, computer understandable form. Also it is not possible to reliably detect structures, like leaves and branches in 3D data provided by our sensor. One approach to solve this problem is to learn how to classify the species by using a set of example plants and machine learning methods. In this paper we are introducing a method for distinguishing plant species using a 3D LIDAR sensor and supervised learning. For that we have developed a set of size and rotation invariant features and evaluated experimentally which are the most descriptive ones. Besides these features we have also compared different learning methods using the toolbox Weka. It turned out that the best methods for our application are simple logistic regression functions, support vector machines and neural networks. In our experiments we used six different plant species, typically available at common nurseries, and about 20 examples of each species. In the laboratory we were able to identify over 98% of these plants correctly.
利用3D激光雷达传感器和机器学习进行植物物种分类
在农业机器人领域,一个主要应用是作物侦察,例如,用于杂草控制的任务。对于这项任务,一个关键的促成因素是对植物和物种的强大检测和分类。自动区分植物物种是一项具有挑战性的任务,因为有些物种看起来非常相似。将人类使用的植物的外观和差异的象征性高级描述转化为正式的、计算机可理解的形式也很困难。此外,在我们的传感器提供的3D数据中,也不可能可靠地检测到树叶和树枝等结构。解决这个问题的一种方法是通过使用一组示例植物和机器学习方法来学习如何对物种进行分类。在本文中,我们介绍了一种使用3D激光雷达传感器和监督学习来区分植物物种的方法。为此,我们开发了一套大小和旋转不变量特征,并通过实验评估了最具描述性的特征。除了这些特性,我们还比较了使用工具箱Weka的不同学习方法。结果表明,对于我们的应用来说,最好的方法是简单的逻辑回归函数、支持向量机和神经网络。在我们的实验中,我们使用了六种不同的植物物种,这些植物通常可以在普通的苗圃里找到,每种植物大约有20个样本。在实验室里,我们能够正确识别98%以上的这些植物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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