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Image processing algorithms for infield single cotton boll counting and yield prediction

机译:infield单棉铃计数和产量预测的图像处理算法

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Cotton boll number is an important component of fiber yield, arguably the most important phenotypic trait to plant breeders and growers alike. In addition, boll number provides a better understanding on the physiological and genetic mechanisms of crop growth and development, facilitating timely decisions on crop management to maximize profit. Traditional in-field cotton boll number counting by visual inspection is time consuming and labor-intensive. In this work, we presented novel image processing algorithms for automatic single cotton boll recognition and counting under natural illumination in the field. A digital camera mounted on a robot platform was used to acquire images with a 45 degrees downward angle on three different days before harvest. A double-thresholding with region growth algorithm combining color and spatial features was applied to segment bolls from background, and three geometric-feature-based algorithms were developed to estimate boll number. Line features detected by linear Hough Transform and the minimum boundary distance between two regions were used to merge disjointed regions split by branches and burrs, respectively. The area and the elongation ratio between major and minor axes were used to separate bolls overlapping in clusters. A total of 210 images captured under sunny and cloudy illumination conditions on three days were used to validate the performance of the cotton boll recognition method, with an F1 score of around 0.98; whereas, the best accuracy for boll counting was around 84.6%. At the whole plot level, fifteen plots were used to build a linear regression model between the estimated boll number and the overall fiber yield with a R-2 value of 0.53. The performance was evaluated by another ten plots with a mean absolute percentage error of 8.92% and a root mean square error of 99 g. The methodology developed in this study provides a means to estimate cotton boll number from color images under field conditions and would be helpful to predict crop yield and understand genetic mechanisms of crop growth.
机译:棉铃数是纤维产量的重要组成部分,可以是植物育种者和种植者的最重要的表型特征。此外,鲍尔号更好地了解作物生长和发展的生理和遗传机制,促进了关于作物管理的及时决定,以最大化利润。通过目视检查的传统棉花棉铃数是耗时和劳动密集型的耗时。在这项工作中,我们提出了新颖的自动棉铃识别和在场自然照明下计算的自动单棉铃识别和计数。安装在机器人平台上的数码相机用于在收获前三个不同的日子在三个不同的日子上获取45度的图像。使用区域生长算法将颜色和空间特征组合的双阈值合并从背景的段铃声上应用,并且开发了三种基于几何特征的算法来估计铃声。通过线性霍夫变换检测的线特征和两个区域之间的最小边界距离分别合并分支和毛刺分别分开的脱位区域。主要和次轴之间的区域和伸长率用于分离在簇中重叠的铃声。在三天内,共有210张捕获的图像捕获了阳光和阴天的照明条件,用于验证棉铃识别方法的性能,F1得分约为0.98;虽然,Boll Counting的最佳准确性约为84.6%。在整个曲线级别,使用十五个图来构建估计的吹铃之间的线性回归模型和R-2值为0.53的整体纤维产率。该性能由另外十个图评估,其平均绝对百分比误差为8.92%,均为99g的均方误差。本研究中开发的方法提供了一种方法,以便在现场条件下从彩色图像估计棉铃数,并且有助于预测作物产量和了解作物生长的遗传机制。

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