基于作物叶片和植物实例分割的田间表型研究

J. Weyler, Federico Magistri, Peter Seitz, J. Behley, C. Stachniss
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引用次数: 15

摘要

在真实的田间条件下对植物表型的详细分析对于植物科学家和育种家了解植物的功能至关重要。与传统的手动表型分析相比,基于视觉的系统具有高空间和时间分辨率的客观和自动化评估的潜力。这种系统的目标之一是检测和分割每棵植物的单叶,因为这些信息与生长阶段相关,并提供表型性状,如叶数、覆盖年龄和大小。在本文中,我们提出了一种基于视觉的方法,该方法对单个作物叶片进行实例分割,并将其与实际田地中相应的作物植物相关联。这使我们能够在每株水平上计算相关的基本表型性状。我们使用卷积神经网络,直接对无人机图像进行操作。该网络生成两种不同的输入图像表示,我们利用它们来聚类单个作物叶片和植物实例。我们提出了一种基于网络预测计算聚类区域的新方法,达到了较高的准确率。此外,我们与其他最先进的方法进行了比较,并表明我们的系统实现了卓越的性能。我们的方法的源代码是可用的。
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In-Field Phenotyping Based on Crop Leaf and Plant Instance Segmentation
A detailed analysis of a plant’s phenotype in real field conditions is critical for plant scientists and breeders to understand plant function. In contrast to traditional phenotyping performed manually, vision-based systems have the potential for an objective and automated assessment with high spatial and temporal resolution. One of such systems’ objectives is to detect and segment individual leaves of each plant since this information correlates to the growth stage and provides phenotypic traits, such as leaf count, cover-age, and size. In this paper, we propose a vision-based approach that performs instance segmentation of individual crop leaves and associates each with its corresponding crop plant in real fields. This enables us to compute relevant basic phenotypic traits on a per-plant level. We employ a convolutional neural network and operate directly on drone imagery. The network generates two different representations of the input image that we utilize to cluster individual crop leaf and plant instances. We propose a novel method to compute clustering regions based on our network’s predictions that achieves high accuracy. Furthermore, we com-pare to other state-of-the-art approaches and show that our system achieves superior performance. The source code of our approach is available 1.
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