Dandrifosse Sébastien, Bouvry Arnaud, Leemans Vincent, Dumont Benjamin, Mercatoris Benoît
Biosystems Dynamics and Exchanges, TERRA Teaching and Research Centre, Gembloux Agro-Bio Tech, University of Liège, Gembloux, Belgium.
Plant Sciences, TERRA Teaching and Research Centre, Gembloux Agro-Bio Tech, University of Liège, Gembloux, Belgium.
Front Plant Sci. 2020 Feb 18;11:96. doi: 10.3389/fpls.2020.00096. eCollection 2020.
Stereo vision is a 3D imaging method that allows quick measurement of plant architecture. Historically, the method has mainly been developed in controlled conditions. This study identified several challenges to adapt the method to natural field conditions and propose solutions. The plant traits studied were leaf area, mean leaf angle, leaf angle distribution, and canopy height. The experiment took place in a winter wheat, L., field dedicated to fertilization trials at Gembloux (Belgium). Images were acquired thanks to two nadir cameras. A machine learning algorithm using RGB and HSV color spaces is proposed to perform soil-plant segmentation robust to light conditions. The matching between images of the two cameras and the leaf area computation was improved if the number of pixels in the image of a scene was binned from 2560 × 2048 to 1280 × 1024 pixels, for a distance of 1 m between the cameras and the canopy. Height descriptors such as median or 95th percentile of plant heights were useful to precisely compare the development of different canopies. Mean spike top height was measured with an accuracy of 97.1 %. The measurement of leaf area was affected by overlaps between leaves so that a calibration curve was necessary. The leaf area estimation presented a root mean square error (RMSE) of 0.37. The impact of wind on the variability of leaf area measurement was inferior to 3% except at the stem elongation stage. Mean leaf angles ranging from 53° to 62° were computed for the whole growing season. For each acquisition date during the vegetative stages, the variability of mean angle measurement was inferior to 1.5% which underpins that the method is precise.
立体视觉是一种3D成像方法,可快速测量植物结构。从历史上看,该方法主要是在受控条件下开发的。本研究确定了将该方法应用于自然田间条件的若干挑战并提出了解决方案。所研究的植物性状包括叶面积、平均叶角、叶角分布和冠层高度。实验在比利时根特的一个用于施肥试验的冬小麦田进行。借助两台天底相机获取图像。提出了一种使用RGB和HSV颜色空间的机器学习算法,以进行对光照条件具有鲁棒性的土壤-植物分割。如果将场景图像中的像素数量从2560×2048像素合并为1280×1024像素,对于相机与冠层之间1米的距离,两台相机图像之间的匹配以及叶面积计算会得到改善。诸如植物高度的中位数或第95百分位数等高度描述符有助于精确比较不同冠层的发育情况。平均穗顶高度的测量精度为97.1%。叶面积的测量受叶片重叠的影响,因此需要一条校准曲线。叶面积估计的均方根误差(RMSE)为0.37。除了茎伸长阶段,风对叶面积测量变异性的影响低于3%。整个生长季节计算出的平均叶角在53°至62°之间。在营养阶段的每个采集日期,平均角度测量的变异性低于1.5%,这表明该方法是精确的。