Plant phenotyping refers to a quantitative description of the plants properties, however in image-based phenotyping analysis, our focus is primarily on the plants anatomical, ontogenetical and physiological properties.This technique reinforced by the success of Deep Learning in the field of image based analysis is applicable to a wide range of research areas making high-throughput screens of plants possible, reducing the time and effort needed for phenotypic characterization.In this study, we use Deep Learning methods (supervised and unsupervised learning based approaches) to semantically segment grapevine leaves images in order to develop an automated object detection (through segmentation) system for leaf phenotyping which will yield information regarding their structure and function.In these directions we studied several deep learning approaches with promising results as well as we reported some future challenging tasks in the area of precision agriculture.Our work contributes to plant lifecycle monitoring through which dynamic traits such as growth and development can be captured and quantified, targeted intervention and selective application of agrochemicals and grapevine variety identification which are key prerequisites in sustainable agriculture.
翻译:植物剖析是指对植物特性的定量描述,然而,在基于图像的剖析分析中,我们的重点主要在于植物的解剖、基因和生理特性。 这一技术由于深学习在基于图像的分析领域的成功而得到加强,适用于一系列广泛的研究领域,使植物的高通量屏幕成为可能的,减少了对植物特征描述所需的时间和努力。 在这次研究中,我们利用深学习方法(监督和不受监督的学习方法)来对树叶叶图象进行语义学分离,以便开发一个自动的叶叶子物体探测(通过分解)系统,提供有关其结构和功能的信息。 在这些方面,我们研究了几个深层次的学习方法,取得了有希望的成果,并报告了在精准农业领域今后的一些具有挑战性的任务。我们的工作有助于植物生命周期监测,通过这种监测,可以捕捉和量化、有针对性地干预和有选择地应用农用化学和葡萄品种识别等动态特征,这些特征是可持续农业的关键先决条件。