Andújar Dionisio, Calle Mikel, Fernández-Quintanilla César, Ribeiro Ángela, Dorado José
Institute of Agricultural Sciences, CSIC, 28006 Madrid, Spain.
National Museum of Natural Sciences, CSIC, 28006 Madrid, Spain.
Sensors (Basel). 2018 Apr 3;18(4):1077. doi: 10.3390/s18041077.
Sensing advances in plant phenotyping are of vital importance in basic and applied plant research. Plant phenotyping enables the modeling of complex shapes, which is useful, for example, in decision-making for agronomic management. In this sense, 3D processing algorithms for plant modeling is expanding rapidly with the emergence of new sensors and techniques designed to morphologically characterize. However, there are still some technical aspects to be improved, such as an accurate reconstruction of end-details. This study adapted low-cost techniques, Structure from Motion (SfM) and MultiView Stereo (MVS), to create 3D models for reconstructing plants of three weed species with contrasting shape and plant structures. Plant reconstruction was developed by applying SfM algorithms to an input set of digital images acquired sequentially following a track that was concentric and equidistant with respect to the plant axis and using three different angles, from a perpendicular to top view, which guaranteed the necessary overlap between images to obtain high precision 3D models. With this information, a dense point cloud was created using MVS, from which a 3D polygon mesh representing every plants' shape and geometry was generated. These 3D models were validated with ground truth values (e.g., plant height, leaf area (LA) and plant dry biomass) using regression methods. The results showed, in general, a good consistency in the correlation equations between the estimated values in the models and the actual values measured in the weed plants. Indeed, 3D modeling using SfM algorithms proved to be a valuable methodology for weed phenotyping, since it accurately estimated the actual values of plant height and LA. Additionally, image processing using the SfM method was relatively fast. Consequently, our results indicate the potential of this budget system for plant reconstruction at high detail, which may be usable in several scenarios, including outdoor conditions. Future research should address other issues, such as the time-cost relationship and the need for detail in the different approaches.
感知植物表型分析的进展在基础和应用植物研究中至关重要。植物表型分析能够对复杂形状进行建模,这在例如农艺管理决策中很有用。从这个意义上说,随着旨在进行形态特征描述的新传感器和技术的出现,用于植物建模的三维处理算法正在迅速扩展。然而,仍有一些技术方面需要改进,比如末端细节的精确重建。本研究采用低成本技术,即运动结构(SfM)和多视图立体视觉(MVS),来创建三维模型,以重建三种具有不同形状和植物结构的杂草物种。通过将SfM算法应用于按照与植物轴同心且等距的轨迹依次获取的一组数字图像输入集,并使用从垂直视图到顶视图的三个不同角度,确保图像之间有必要的重叠,从而获得高精度的三维模型,以此开展植物重建。利用这些信息,使用MVS创建了一个密集点云,从中生成了一个表示每种植物形状和几何结构的三维多边形网格。使用回归方法,用地面真值(如株高、叶面积(LA)和植物干生物量)对这些三维模型进行了验证。结果总体表明,模型中的估计值与杂草植物中测量的实际值之间的相关方程具有良好的一致性。事实上,使用SfM算法进行三维建模被证明是一种用于杂草表型分析的有价值的方法,因为它准确地估计了株高和叶面积的实际值。此外,使用SfM方法进行图像处理相对较快。因此,我们的结果表明了这种低成本系统在高细节植物重建方面的潜力,这在包括户外条件在内的多种场景中可能都有用。未来的研究应解决其他问题,如时间成本关系以及不同方法中对细节的需求。