论文标题
结合图像处理,植物发育特性和匈牙利算法的一种新型技术,可改善玉米的叶片检测
A Novel Technique Combining Image Processing, Plant Development Properties, and the Hungarian Algorithm, to Improve Leaf Detection in Maize
论文作者
论文摘要
手动确定植物表型特性(例如植物建筑,生长和健康)非常耗时,有时是破坏性的。自动图像分析已成为一种流行的方法。这项研究旨在从高质量的室内图像的时间顺序中确定叶子的位置(和数量),这些室内图像由多种视图组成,尤其是玉米图像。该过程使用图像上的分割,使用凸船体在每个时间步骤中选择最佳视图,然后使用相应图像的骨架化。为了去除骨骼马刺,应用了离散的骨骼进化修剪过程。纳入了有关玉米开发的统计数据,以帮助区分真实的叶子和假叶。此外,对于每个时间步,使用图理论匈牙利算法将叶子与前三天的叶子匹配。这种匹配的算法既可以用来删除误报,又可以预测真叶,即使它们完全从图像本身中被遮住了。使用两个不同视图的27天的13天玉米植物组成的开放数据集评估了该算法。数据集中的真实叶子总数为1843年,我们提出的技术总共检测到1690片叶子,其中包括1674叶,只有16个假叶子,召回了90.8%,精度为99.0%。
Manual determination of plant phenotypic properties such as plant architecture, growth, and health is very time consuming and sometimes destructive. Automatic image analysis has become a popular approach. This research aims to identify the position (and number) of leaves from a temporal sequence of high-quality indoor images consisting of multiple views, focussing in particular of images of maize. The procedure used a segmentation on the images, using the convex hull to pick the best view at each time step, followed by a skeletonization of the corresponding image. To remove skeleton spurs, a discrete skeleton evolution pruning process was applied. Pre-existing statistics regarding maize development was incorporated to help differentiate between true leaves and false leaves. Furthermore, for each time step, leaves were matched to those of the previous and next three days using the graph-theoretic Hungarian algorithm. This matching algorithm can be used to both remove false positives, and also to predict true leaves, even if they were completely occluded from the image itself. The algorithm was evaluated using an open dataset consisting of 13 maize plants across 27 days from two different views. The total number of true leaves from the dataset was 1843, and our proposed techniques detect a total of 1690 leaves including 1674 true leaves, and only 16 false leaves, giving a recall of 90.8%, and a precision of 99.0%.