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A contextualized approach for segmentation of foliage in different crop species

机译:一种关于不同作物物种叶子分割的语境化方法

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摘要

Computer vision algorithms represent an important tool in agriculture. Particularly, foliage segmentation is a fundamental step to achieve accurate estimations in more complex visual analysis such as plant health monitoring, weed detection, growth estimation, and flower and fruit classification. Unfortunately, this complexity leads to the problem of generalizing between datasets, an issue that has not yet been addressed by the state of the art. Our work aims at filling this gap by investigating the role of vegetative indexes and color spaces in different formulations of machine learning algorithms. To this end, we have considered datasets observing variations with respect to crop species, leaf color, acquisition settings and illumination. Furthermore, we performed a comparison with different state of the art approaches that include both thresholding and machine learning. From our analysis, we have proposed a new formulation that consists of combining the CIE Luv color space and support vector machines in order to benefit from contextualized information obtained through neighboring pixels. Experiments show that our approach achieves the best results.
机译:计算机视觉算法代表农业的重要工具。特别是,叶子分割是实现更复杂的视觉分析中的准确估计的基本步骤,例如植物健康监测,杂草检测,生长估计和花卉和水果分类。不幸的是,这种复杂性导致数据集之间概括的问题,这是尚未由最先进的问题尚未解决的问题。我们的工作旨在通过调查营养指标和色彩空间在机器学习算法的不同配方中的作用来填补这一差距。为此,我们考虑了观察关于作物种类,叶子颜色,采集设置和照明的变化的数据集。此外,我们执行了与包括阈值和机器学习的不同状态的不同状态的比较。从我们的分析中,我们提出了一种新的配方,包括组合CIE LUV颜色空间和支持向量机,以便从通过相邻像素获得的上下文化信息中受益。实验表明,我们的方法实现了最佳结果。

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