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DeepFlower: a deep learning-based approach to characterize flowering patterns of cotton plants in the field

机译:Deepflower:基于深入的学习方法,以表征田间棉花植物开花模式

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Flowering is one of the most important processes for flowering plants such as cotton, reflecting the transition from vegetative to reproductive growth and is of central importance to crop yield and adaptability. Conventionally, categorical scoring systems have been widely used to study flowering patterns, which are laborious and subjective to apply. The goal of this study was to develop a deep learning-based approach to characterize flowering patterns for cotton plants that flower progressively over several weeks, with flowers distributed across much of the plant. A ground mobile system (GPhenoVision) was modified with a multi-view color imaging module, to acquire images of a plant from four viewing angles at a time. A total of 116 plants from 23 genotypes were imaged during an approximately 2-month period with an average scanning interval of 2–3?days, yielding a dataset containing 8666 images. A subset (475) of the images were randomly selected and manually annotated to form datasets for training and selecting the best object detection model. With the best model, a deep learning-based approach (DeepFlower) was developed to detect and count individual emerging blooms for a plant on a given date. The DeepFlower was used to process all images to obtain bloom counts for individual plants over the flowering period, using the resulting counts to derive flowering curves (and thus flowering characteristics). Regression analyses showed that the DeepFlower method could accurately (R2?=?0.88 and RMSE?=?0.79) detect and count emerging blooms on cotton plants, and statistical analyses showed that imaging-derived flowering characteristics had similar effectiveness as manual assessment for identifying differences among genetic categories or genotypes. The developed approach could thus be an effective and efficient tool to characterize flowering patterns for flowering plants (such as cotton) with complex canopy architecture.
机译:开花是开花植物如棉花的最重要的过程之一,反映了从植物生殖增长的过渡,并具有核心产量和适应性的核心重要性。传统上,分类评分系统已被广泛用于研究开花模式,这些花纹是艰苦的和主观的应用。本研究的目标是发展基于深入的学习方法,以表征棉花植物的开花模式,逐渐花了几周,用植物分布在大量的植物上。用多视图彩色成像模块修改地面移动系统(Gphenovision),以一次从四个观察角度获取植物的图像。在约2个月的时间内成像来自23种基因型的116株,平均扫描间隔为2-3Ω天,产生包含8666个图像的数据集。图像的子集(475)被随机选择并手动注释以形成用于训练的数据集并选择最佳对象检测模型。利用最佳模型,开发了一种深入的学习方法(Deepflower),以检测和计算在给定日期的工厂的各个新兴盛开。 DeewFlower用于处理所有图像以在开花时期获得各个植物的盛开计数,使用所得的计数来推导开花曲线(因此开花特性)。回归分析表明,Deep花方法可以准确地(R2?= 0.88和RMSE?=?0.79)检测和计数棉花植物上的出现盛开,并且统计学分析表明,成像的开花特性与用于识别差异的手动评估相似的有效性在遗传类别或基因型中。因此,开发的方法可以是一种有效且有效的工具,以表征开花植物(如棉花)与复杂的冠层架构的开花模式。

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